Discrete Mathematics – Quick Guide


Table of Contents

Discrete Mathematics – Quick Guide


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Discrete Mathematics – Introduction

Mathematics can be broadly classified into two categories −

  • Continuous Mathematics − It is based upon continuous number line or the real numbers. It is characterized by the fact that between any two numbers, there are almost always an infinite set of numbers. For example, a function in continuous mathematics can be plotted in a smooth curve without breaks.

  • Discrete Mathematics − It involves distinct values; i.e. between any two points, there are a countable number of points. For example, if we have a finite set of objects, the function can be defined as a list of ordered pairs having these objects, and can be presented as a complete list of those pairs.

Topics in Discrete Mathematics

Though there cannot be a definite number of branches of Discrete Mathematics, the following topics are almost always covered in any study regarding this matter −

  • Sets, Relations and Functions
  • Mathematical Logic
  • Group theory
  • Counting Theory
  • Probability
  • Mathematical Induction and Recurrence Relations
  • Graph Theory
  • Trees
  • Boolean Algebra

We will discuss each of these concepts in the subsequent chapters of this tutorial.

Discrete Mathematics – Sets

German mathematician G. Cantor introduced the concept of sets. He had defined a set as a collection of definite and distinguishable objects selected by the means of certain rules or description.

Set theory forms the basis of several other fields of study like counting theory, relations, graph theory and finite state machines. In this chapter, we will cover the different aspects of Set Theory.

Set – Definition

A set is an unordered collection of different elements. A set can be written explicitly by listing its elements using set bracket. If the order of the elements is changed or any element of a set is repeated, it does not make any changes in the set.

Some Example of Sets

  • A set of all positive integers
  • A set of all the planets in the solar system
  • A set of all the states in India
  • A set of all the lowercase letters of the alphabet

Representation of a Set

Sets can be represented in two ways −

  • Roster or Tabular Form
  • Set Builder Notation

Roster or Tabular Form

The set is represented by listing all the elements comprising it. The elements are enclosed within braces and separated by commas.

Example 1 − Set of vowels in English alphabet, $A = lbrace a,e,i,o,u rbrace$

Example 2 − Set of odd numbers less than 10, $B = lbrace 1,3,5,7,9 rbrace$

Set Builder Notation

The set is defined by specifying a property that elements of the set have in common. The set is described as $A = lbrace x : p(x) rbrace$

Example 1 − The set $lbrace a,e,i,o,u rbrace$ is written as −

$A = lbrace x : text{x is a vowel in English alphabet} rbrace$

Example 2 − The set $lbrace 1,3,5,7,9 rbrace$ is written as −

$B = lbrace x : 1 le x lt 10 and (x % 2) ne 0 rbrace$

If an element x is a member of any set S, it is denoted by $x in S$ and if an element y is not a member of set S, it is denoted by $y notin S$.

ExampleIf $S = lbrace1, 1.2, 1.7, 2rbrace , 1 in S$ but $1.5 notin S$

Some Important Sets

N − the set of all natural numbers = $lbrace1, 2, 3, 4, …..rbrace$

Z − the set of all integers = $lbrace….., -3, -2, -1, 0, 1, 2, 3, …..rbrace$

Z+ − the set of all positive integers

Q − the set of all rational numbers

R − the set of all real numbers

W − the set of all whole numbers

Cardinality of a Set

Cardinality of a set S, denoted by $|S|$, is the number of elements of the set. The number is also referred as the cardinal number. If a set has an infinite number of elements, its cardinality is $infty$.

Example − $|lbrace 1, 4, 3, 5 rbrace | = 4, | lbrace 1, 2, 3, 4, 5, dots rbrace | = infty$

If there are two sets X and Y,

  • $|X| = |Y|$ denotes two sets X and Y having same cardinality. It occurs when the number of elements in X is exactly equal to the number of elements in Y. In this case, there exists a bijective function ‘f’ from X to Y.

  • $|X| le |Y|$ denotes that set X’s cardinality is less than or equal to set Y’s cardinality. It occurs when number of elements in X is less than or equal to that of Y. Here, there exists an injective function ‘f’ from X to Y.

  • $|X| lt |Y|$ denotes that set X’s cardinality is less than set Y’s cardinality. It occurs when number of elements in X is less than that of Y. Here, the function ‘f’ from X to Y is injective function but not bijective.

  • $If |X| le |Y|$ and $|X| ge |Y|$ then $|X| = |Y|$. The sets X and Y are commonly referred as equivalent sets.

Types of Sets

Sets can be classified into many types. Some of which are finite, infinite, subset, universal, proper, singleton set, etc.

Finite Set

A set which contains a definite number of elements is called a finite set.

Example − $S = lbrace x 😐 😡 in N$ and $70 gt x gt 50 rbrace$

Infinite Set

A set which contains infinite number of elements is called an infinite set.

Example − $S = lbrace x : | : x in N $ and $ x gt 10 rbrace$

Subset

A set X is a subset of set Y (Written as $X subseteq Y$) if every element of X is an element of set Y.

Example 1 − Let, $X = lbrace 1, 2, 3, 4, 5, 6 rbrace$ and $Y = lbrace 1, 2 rbrace$. Here set Y is a subset of set X as all the elements of set Y is in set X. Hence, we can write $Y subseteq X$.

Example 2 − Let, $X = lbrace 1, 2, 3 rbrace$ and $Y = lbrace 1, 2, 3 rbrace$. Here set Y is a subset (Not a proper subset) of set X as all the elements of set Y is in set X. Hence, we can write $Y subseteq X$.

Proper Subset

The term “proper subset” can be defined as “subset of but not equal to”. A Set X is a proper subset of set Y (Written as $ X subset Y $) if every element of X is an element of set Y and $|X| lt |Y|$.

Example − Let, $X = lbrace 1, 2, 3, 4, 5, 6 rbrace$ and $Y = lbrace 1, 2 rbrace$. Here set $Y subset X$ since all elements in $Y$ are contained in $X$ too and $X$ has at least one element is more than set $Y$.

Universal Set

It is a collection of all elements in a particular context or application. All the sets in that context or application are essentially subsets of this universal set. Universal sets are represented as $U$.

Example − We may define $U$ as the set of all animals on earth. In this case, set of all mammals is a subset of $U$, set of all fishes is a subset of $U$, set of all insects is a subset of $U$, and so on.

Empty Set or Null Set

An empty set contains no elements. It is denoted by $emptyset$. As the number of elements in an empty set is finite, empty set is a finite set. The cardinality of empty set or null set is zero.

Example − $S = lbrace x 😐 : x in N$ and $7 lt x lt 8 rbrace = emptyset$

Singleton Set or Unit Set

Singleton set or unit set contains only one element. A singleton set is denoted by $lbrace s rbrace$.

Example − $S = lbrace x 😐 😡 in N, 7 lt x lt 9 rbrace$ = $lbrace 8 rbrace$

Equal Set

If two sets contain the same elements they are said to be equal.

Example − If $A = lbrace 1, 2, 6 rbrace$ and $B = lbrace 6, 1, 2 rbrace$, they are equal as every element of set A is an element of set B and every element of set B is an element of set A.

Equivalent Set

If the cardinalities of two sets are same, they are called equivalent sets.

Example − If $A = lbrace 1, 2, 6 rbrace$ and $B = lbrace 16, 17, 22 rbrace$, they are equivalent as cardinality of A is equal to the cardinality of B. i.e. $|A| = |B| = 3$

Overlapping Set

Two sets that have at least one common element are called overlapping sets.

In case of overlapping sets −

  • $n(A cup B) = n(A) + n(B) – n(A cap B)$

  • $n(A cup B) = n(A – B) + n(B – A) + n(A cap B)$

  • $n(A) = n(A – B) + n(A cap B)$

  • $n(B) = n(B – A) + n(A cap B)$

Example − Let, $A = lbrace 1, 2, 6 rbrace$ and $B = lbrace 6, 12, 42 rbrace$. There is a common element ‘6’, hence these sets are overlapping sets.

Disjoint Set

Two sets A and B are called disjoint sets if they do not have even one element in common. Therefore, disjoint sets have the following properties −

  • $n(A cap B) = emptyset$

  • $n(A cup B) = n(A) + n(B)$

Example − Let, $A = lbrace 1, 2, 6 rbrace$ and $B = lbrace 7, 9, 14 rbrace$, there is not a single common element, hence these sets are overlapping sets.

Venn Diagrams

Venn diagram, invented in 1880 by John Venn, is a schematic diagram that shows all possible logical relations between different mathematical sets.

Examples

Venn Diagram

Set Operations

Set Operations include Set Union, Set Intersection, Set Difference, Complement of Set, and Cartesian Product.

Set Union

The union of sets A and B (denoted by $A cup B$) is the set of elements which are in A, in B, or in both A and B. Hence, $A cup B = lbrace x 😐 : x in A OR x in B rbrace$.

Example − If $A = lbrace 10, 11, 12, 13 rbrace$ and B = $lbrace 13, 14, 15 rbrace$, then $A cup B = lbrace 10, 11, 12, 13, 14, 15 rbrace$. (The common element occurs only once)

Set Union

Set Intersection

The intersection of sets A and B (denoted by $A cap B$) is the set of elements which are in both A and B. Hence, $A cap B = lbrace x :|: x in A AND x in B rbrace$.

Example − If $A = lbrace 11, 12, 13 rbrace$ and $B = lbrace 13, 14, 15 rbrace$, then $A cap B = lbrace 13 rbrace$.

Set Intersection

Set Difference/ Relative Complement

The set difference of sets A and B (denoted by $A – B$) is the set of elements which are only in A but not in B. Hence, $A – B = lbrace x 😐 : x in A AND x notin B rbrace$.

Example − If $A = lbrace 10, 11, 12, 13 rbrace$ and $B = lbrace 13, 14, 15 rbrace$, then $(A – B) = lbrace 10, 11, 12 rbrace$ and $(B – A) = lbrace 14, 15 rbrace$. Here, we can see $(A – B) ne (B – A)$

Set Difference

Complement of a Set

The complement of a set A (denoted by $A’$) is the set of elements which are not in set A. Hence, $A” = lbrace x | x notin A rbrace$.

More specifically, $A”= (U – A)$ where $U$ is a universal set which contains all objects.

Example − If $A = lbrace x 😐 : x : {belongs: to: set: of: odd :integers} rbrace$ then $A” = lbrace y: | : y : {does: not: belong: to: set: of: odd: integers } rbrace$

Complement Set

Cartesian Product / Cross Product

The Cartesian product of n number of sets $A_1, A_2, dots A_n$ denoted as $A_1 times A_2 dots times A_n$ can be defined as all possible ordered pairs $(x_1, x_2, dots x_n)$ where $x_1 in A_1, x_2 in A_2, dots x_n in A_n$

Example − If we take two sets $A = lbrace a, b rbrace$ and $B = lbrace 1, 2 rbrace$,

The Cartesian product of A and B is written as − $A times B = lbrace (a, 1), (a, 2), (b, 1), (b, 2)rbrace$

The Cartesian product of B and A is written as − $B times A = lbrace (1, a), (1, b), (2, a), (2, b)rbrace$

Power Set

Power set of a set S is the set of all subsets of S including the empty set. The cardinality of a power set of a set S of cardinality n is $2^n$. Power set is denoted as $P(S)$.

Example −

For a set $S = lbrace a, b, c, d rbrace$ let us calculate the subsets −

  • Subsets with 0 elements − $lbrace emptyset rbrace$ (the empty set)

  • Subsets with 1 element − $lbrace a rbrace, lbrace b rbrace, lbrace c rbrace, lbrace d rbrace$

  • Subsets with 2 elements − $lbrace a, b rbrace, lbrace a,c rbrace, lbrace a, d rbrace, lbrace b, c rbrace, lbrace b,d rbrace,lbrace c,d rbrace$

  • Subsets with 3 elements − $lbrace a ,b, crbrace,lbrace a, b, d rbrace, lbrace a,c,d rbrace,lbrace b,c,d rbrace$

  • Subsets with 4 elements − $lbrace a, b, c, d rbrace$

Hence, $P(S)=$

$lbrace quad lbrace emptyset rbrace, lbrace a rbrace, lbrace b rbrace, lbrace c rbrace, lbrace d rbrace, lbrace a,b rbrace, lbrace a,c rbrace, lbrace a,d rbrace, lbrace b,c rbrace, lbrace b,d rbrace, lbrace c,d rbrace, lbrace a,b,c rbrace, lbrace a,b,d rbrace, lbrace a,c,d rbrace, lbrace b,c,d rbrace, lbrace a,b,c,d rbrace quad rbrace$

$| P(S) | = 2^4 = 16$

Note − The power set of an empty set is also an empty set.

$| P (lbrace emptyset rbrace) | = 2^0 = 1$

Partitioning of a Set

Partition of a set, say S, is a collection of n disjoint subsets, say $P_1, P_2, dots P_n$ that satisfies the following three conditions −

  • $P_i$ does not contain the empty set.

    $lbrack P_i ne lbrace emptyset rbrace for all 0 lt i le n rbrack$

  • The union of the subsets must equal the entire original set.

    $lbrack P_1 cup P_2 cup dots cup P_n = S rbrack$

  • The intersection of any two distinct sets is empty.

    $lbrack P_a cap P_b = lbrace emptyset rbrace, for a ne b where n ge a,: b ge 0 rbrack$

Example

Let $S = lbrace a, b, c, d, e, f, g, h rbrace$

One probable partitioning is $lbrace a rbrace, lbrace b, c, d rbrace, lbrace e, f, g, h rbrace$

Another probable partitioning is $lbrace a, b rbrace, lbrace c, d rbrace, lbrace e, f, g, h rbrace$

Bell Numbers

Bell numbers give the count of the number of ways to partition a set. They are denoted by $B_n$ where n is the cardinality of the set.

Example

Let $S = lbrace 1, 2, 3rbrace$, $n = |S| = 3$

The alternate partitions are −

1. $emptyset , lbrace 1, 2, 3 rbrace$

2. $lbrace 1 rbrace , lbrace 2, 3 rbrace$

3. $lbrace 1, 2 rbrace , lbrace 3 rbrace$

4. $lbrace 1, 3 rbrace , lbrace 2 rbrace$

5. $lbrace 1 rbrace , lbrace 2 rbrace , lbrace 3 rbrace$

Hence $B_3 = 5$

Discrete Mathematics – Relations

Whenever sets are being discussed, the relationship between the elements of the sets is the next thing that comes up. Relations may exist between objects of the same set or between objects of two or more sets.

Definition and Properties

A binary relation R from set x to y (written as $xRy$ or $R(x,y)$) is a subset of the Cartesian product $x times y$. If the ordered pair of G is reversed, the relation also changes.

Generally an n-ary relation R between sets $A_1, dots , and A_n$ is a subset of the n-ary product $A_1 times dots times A_n$. The minimum cardinality of a relation R is Zero and maximum is $n^2$ in this case.

A binary relation R on a single set A is a subset of $A times A$.

For two distinct sets, A and B, having cardinalities m and n respectively, the maximum cardinality of a relation R from A to B is mn.

Domain and Range

If there are two sets A and B, and relation R have order pair (x, y), then −

  • The domain of R, Dom(R), is the set $lbrace x 😐 : (x, y) in R :for: some: y: in: B rbrace$

  • The range of R, Ran(R), is the set $lbrace y: |: (x, y) in R :for: some: x: in: Arbrace$

Examples

Let, $A = lbrace 1, 2, 9 rbrace $ and $ B = lbrace 1, 3, 7 rbrace$

  • Case 1 − If relation R is ”equal to” then $R = lbrace (1, 1), (3, 3) rbrace$

    Dom(R) = $lbrace 1, 3 rbrace , Ran(R) = lbrace 1, 3 rbrace$

  • Case 2 − If relation R is ”less than” then $R = lbrace (1, 3), (1, 7), (2, 3), (2, 7) rbrace$

    Dom(R) = $lbrace 1, 2 rbrace , Ran(R) = lbrace 3, 7 rbrace$

  • Case 3 − If relation R is ”greater than” then $R = lbrace (2, 1), (9, 1), (9, 3), (9, 7) rbrace$

    Dom(R) = $lbrace 2, 9 rbrace , Ran(R) = lbrace 1, 3, 7 rbrace$

Representation of Relations using Graph

A relation can be represented using a directed graph.

The number of vertices in the graph is equal to the number of elements in the set from which the relation has been defined. For each ordered pair (x, y) in the relation R, there will be a directed edge from the vertex ‘x’ to vertex ‘y’. If there is an ordered pair (x, x), there will be self- loop on vertex ‘x’.

Suppose, there is a relation $R = lbrace (1, 1), (1,2), (3, 2) rbrace$ on set $S = lbrace 1, 2, 3 rbrace$, it can be represented by the following graph −

Relation

Types of Relations

  • The Empty Relation between sets X and Y, or on E, is the empty set $emptyset$

  • The Full Relation between sets X and Y is the set $X times Y$

  • The Identity Relation on set X is the set $lbrace (x, x) | x in X rbrace$

  • The Inverse Relation R” of a relation R is defined as − $R” = lbrace (b, a) | (a, b) in R rbrace$

    Example − If $R = lbrace (1, 2), (2, 3) rbrace$ then $R” $ will be $lbrace (2, 1), (3, 2) rbrace$

  • A relation R on set A is called Reflexive if $forall a in A$ is related to a (aRa holds)

    Example − The relation $R = lbrace (a, a), (b, b) rbrace$ on set $X = lbrace a, b rbrace$ is reflexive.

  • A relation R on set A is called Irreflexive if no $a in A$ is related to a (aRa does not hold).

    Example − The relation $R = lbrace (a, b), (b, a) rbrace$ on set $X = lbrace a, b rbrace$ is irreflexive.

  • A relation R on set A is called Symmetric if $xRy$ implies $yRx$, $forall x in A$ and $forall y in A$.

    Example − The relation $R = lbrace (1, 2), (2, 1), (3, 2), (2, 3) rbrace$ on set $A = lbrace 1, 2, 3 rbrace$ is symmetric.

  • A relation R on set A is called Anti-Symmetric if $xRy$ and $yRx$ implies $x = y : forall x in A$ and $forall y in A$.

    Example − The relation $R = lbrace (x, y)to N |:x leq y rbrace$ is anti-symmetric since $x leq y$ and $y leq x$ implies $x = y$.

  • A relation R on set A is called Transitive if $xRy$ and $yRz$ implies $xRz, forall x,y,z in A$.

    Example − The relation $R = lbrace (1, 2), (2, 3), (1, 3) rbrace$ on set $A = lbrace 1, 2, 3 rbrace$ is transitive.

  • A relation is an Equivalence Relation if it is reflexive, symmetric, and transitive.

    Example − The relation $R = lbrace (1, 1), (2, 2), (3, 3), (1, 2), (2,1), (2,3), (3,2), (1,3), (3,1) rbrace$ on set $A = lbrace 1, 2, 3 rbrace$ is an equivalence relation since it is reflexive, symmetric, and transitive.

Discrete Mathematics – Functions

A Function assigns to each element of a set, exactly one element of a related set. Functions find their application in various fields like representation of the computational complexity of algorithms, counting objects, study of sequences and strings, to name a few. The third and final chapter of this part highlights the important aspects of functions.

Function – Definition

A function or mapping (Defined as $f: X rightarrow Y$) is a relationship from elements of one set X to elements of another set Y (X and Y are non-empty sets). X is called Domain and Y is called Codomain of function ‘f’.

Function ‘f’ is a relation on X and Y such that for each $x in X$, there exists a unique $y in Y$ such that $(x,y) in R$. ‘x’ is called pre-image and ‘y’ is called image of function f.

A function can be one to one or many to one but not one to many.

Injective / One-to-one function

A function $f: A rightarrow B$ is injective or one-to-one function if for every $b in B$, there exists at most one $a in A$ such that $f(s) = t$.

This means a function f is injective if $a_1 ne a_2$ implies $f(a1) ne f(a2)$.

Example

  • $f: N rightarrow N, f(x) = 5x$ is injective.

  • $f: N rightarrow N, f(x) = x^2$ is injective.

  • $f: Rrightarrow R, f(x) = x^2$ is not injective as $(-x)^2 = x^2$

Surjective / Onto function

A function $f: A rightarrow B$ is surjective (onto) if the image of f equals its range. Equivalently, for every $b in B$, there exists some $a in A$ such that $f(a) = b$. This means that for any y in B, there exists some x in A such that $y = f(x)$.

Example

  • $f : N rightarrow N, f(x) = x + 2$ is surjective.

  • $f : R rightarrow R, f(x) = x^2$ is not surjective since we cannot find a real number whose square is negative.

Bijective / One-to-one Correspondent

A function $f: A rightarrow B$ is bijective or one-to-one correspondent if and only if f is both injective and surjective.

Problem

Prove that a function $f: R rightarrow R$ defined by $f(x) = 2x – 3$ is a bijective function.

Explanation − We have to prove this function is both injective and surjective.

If $f(x_1) = f(x_2)$, then $2x_1 – 3 = 2x_2 – 3 $ and it implies that $x_1 = x_2$.

Hence, f is injective.

Here, $2x – 3= y$

So, $x = (y+5)/3$ which belongs to R and $f(x) = y$.

Hence, f is surjective.

Since f is both surjective and injective, we can say f is bijective.

Inverse of a Function

The inverse of a one-to-one corresponding function $f : A rightarrow B$, is the function $g : B rightarrow A$, holding the following property −

$f(x) = y Leftrightarrow g(y) = x$

The function f is called invertible, if its inverse function g exists.

Example

  • A Function $f : Z rightarrow Z, f(x)=x+5$, is invertible since it has the inverse function $ g : Z rightarrow Z, g(x)= x-5$.

  • A Function $f : Z rightarrow Z, f(x)=x^2$ is not invertiable since this is not one-to-one as $(-x)^2=x^2$.

Composition of Functions

Two functions $f: A rightarrow B$ and $g: B rightarrow C$ can be composed to give a composition $g o f$. This is a function from A to C defined by $(gof)(x) = g(f(x))$

Example

Let $f(x) = x + 2$ and $g(x) = 2x + 1$, find $( f o g)(x)$ and $( g o f)(x)$.

Solution

$(f o g)(x) = f (g(x)) = f(2x + 1) = 2x + 1 + 2 = 2x + 3$

$(g o f)(x) = g (f(x)) = g(x + 2) = 2 (x+2) + 1 = 2x + 5$

Hence, $(f o g)(x) neq (g o f)(x)$

Some Facts about Composition

  • If f and g are one-to-one then the function $(g o f)$ is also one-to-one.

  • If f and g are onto then the function $(g o f)$ is also onto.

  • Composition always holds associative property but does not hold commutative property.

Discrete Mathematics – Propositional Logic

The rules of mathematical logic specify methods of reasoning mathematical statements. Greek philosopher, Aristotle, was the pioneer of logical reasoning. Logical reasoning provides the theoretical base for many areas of mathematics and consequently computer science. It has many practical applications in computer science like design of computing machines, artificial intelligence, definition of data structures for programming languages etc.

Propositional Logic is concerned with statements to which the truth values, “true” and “false”, can be assigned. The purpose is to analyze these statements either individually or in a composite manner.

Prepositional Logic – Definition

A proposition is a collection of declarative statements that has either a truth value “true” or a truth value “false”. A propositional consists of propositional variables and connectives. We denote the propositional variables by capital letters (A, B, etc). The connectives connect the propositional variables.

Some examples of Propositions are given below −

  • “Man is Mortal”, it returns truth value “TRUE”
  • “12 + 9 = 3 – 2”, it returns truth value “FALSE”

The following is not a Proposition −

  • “A is less than 2”. It is because unless we give a specific value of A, we cannot say whether the statement is true or false.

Connectives

In propositional logic generally we use five connectives which are −

  • OR ($lor$)

  • AND ($land$)

  • Negation/ NOT ($lnot$)

  • Implication / if-then ($rightarrow$)

  • If and only if ($Leftrightarrow$).

OR ($lor$) − The OR operation of two propositions A and B (written as $A lor B$) is true if at least any of the propositional variable A or B is true.

The truth table is as follows −

A B A ∨ B
True True True
True False True
False True True
False False False

AND ($land$) − The AND operation of two propositions A and B (written as $A land B$) is true if both the propositional variable A and B is true.

The truth table is as follows −

A B A ∧ B
True True True
True False False
False True False
False False False

Negation ($lnot$) − The negation of a proposition A (written as $lnot A$) is false when A is true and is true when A is false.

The truth table is as follows −

A ¬ A
True False
False True

Implication / if-then ($rightarrow$) − An implication $A rightarrow B$ is the proposition “if A, then B”. It is false if A is true and B is false. The rest cases are true.

The truth table is as follows −

A B A → B
True True True
True False False
False True True
False False True

If and only if ($ Leftrightarrow $) − $A Leftrightarrow B$ is bi-conditional logical connective which is true when p and q are same, i.e. both are false or both are true.

The truth table is as follows −

A B A ⇔ B
True True True
True False False
False True False
False False True

Tautologies

A Tautology is a formula which is always true for every value of its propositional variables.

Example − Prove $lbrack (A rightarrow B) land A rbrack rightarrow B$ is a tautology

The truth table is as follows −

A B A → B (A → B) ∧ A [( A → B ) ∧ A] → B
True True True True True
True False False False True
False True True False True
False False True False True

As we can see every value of $lbrack (A rightarrow B) land A rbrack rightarrow B$ is “True”, it is a tautology.

Contradictions

A Contradiction is a formula which is always false for every value of its propositional variables.

Example − Prove $(A lor B) land lbrack ( lnot A) land (lnot B) rbrack$ is a contradiction

The truth table is as follows −

A B A ∨ B ¬ A ¬ B (¬ A) ∧ ( ¬ B) (A ∨ B) ∧ [( ¬ A) ∧ (¬ B)]
True True True False False False False
True False True False True False False
False True True True False False False
False False False True True True False

As we can see every value of $(A lor B) land lbrack ( lnot A) land (lnot B) rbrack$ is “False”, it is a contradiction.

Contingency

A Contingency is a formula which has both some true and some false values for every value of its propositional variables.

Example − Prove $(A lor B) land (lnot A)$ a contingency

The truth table is as follows −

A B A ∨ B ¬ A (A ∨ B) ∧ (¬ A)
True True True False False
True False True False False
False True True True True
False False False True False

As we can see every value of $(A lor B) land (lnot A)$ has both “True” and “False”, it is a contingency.

Propositional Equivalences

Two statements X and Y are logically equivalent if any of the following two conditions hold −

  • The truth tables of each statement have the same truth values.

  • The bi-conditional statement $X Leftrightarrow Y$ is a tautology.

Example − Prove $lnot (A lor B) and lbrack (lnot A) land (lnot B) rbrack$ are equivalent

Testing by 1st method (Matching truth table)

A B A ∨ B ¬ (A ∨ B) ¬ A ¬ B [(¬ A) ∧ (¬ B)]
True True True False False False False
True False True False False True False
False True True False True False False
False False False True True True True

Here, we can see the truth values of $lnot (A lor B) and lbrack (lnot A) land (lnot B) rbrack$ are same, hence the statements are equivalent.

Testing by 2nd method (Bi-conditionality)

A B ¬ (A ∨ B ) [(¬ A) ∧ (¬ B)] [¬ (A ∨ B)] ⇔ [(¬ A ) ∧ (¬ B)]
True True False False True
True False False False True
False True False False True
False False True True True

As $lbrack lnot (A lor B) rbrack Leftrightarrow lbrack (lnot A ) land (lnot B) rbrack$ is a tautology, the statements are equivalent.

Inverse, Converse, and Contra-positive

Implication / if-then $(rightarrow)$ is also called a conditional statement. It has two parts −

  • Hypothesis, p
  • Conclusion, q

As mentioned earlier, it is denoted as $p rightarrow q$.

Example of Conditional Statement − “If you do your homework, you will not be punished.” Here, “you do your homework” is the hypothesis, p, and “you will not be punished” is the conclusion, q.

Inverse − An inverse of the conditional statement is the negation of both the hypothesis and the conclusion. If the statement is “If p, then q”, the inverse will be “If not p, then not q”. Thus the inverse of $p rightarrow q$ is $ lnot p rightarrow lnot q$.

Example − The inverse of “If you do your homework, you will not be punished” is “If you do not do your homework, you will be punished.”

Converse − The converse of the conditional statement is computed by interchanging the hypothesis and the conclusion. If the statement is “If p, then q”, the converse will be “If q, then p”. The converse of $p rightarrow q$ is $q rightarrow p$.

Example − The converse of “If you do your homework, you will not be punished” is “If you will not be punished, you do your homework”.

Contra-positive − The contra-positive of the conditional is computed by interchanging the hypothesis and the conclusion of the inverse statement. If the statement is “If p, then q”, the contra-positive will be “If not q, then not p”. The contra-positive of $p rightarrow q$ is $lnot q rightarrow lnot p$.

Example − The Contra-positive of ” If you do your homework, you will not be punished” is “If you are punished, you did not do your homework”.

Duality Principle

Duality principle states that for any true statement, the dual statement obtained by interchanging unions into intersections (and vice versa) and interchanging Universal set into Null set (and vice versa) is also true. If dual of any statement is the statement itself, it is said self-dual statement.

Example − The dual of $(A cap B ) cup C$ is $(A cup B) cap C$

Normal Forms

We can convert any proposition in two normal forms −

  • Conjunctive normal form
  • Disjunctive normal form

Conjunctive Normal Form

A compound statement is in conjunctive normal form if it is obtained by operating AND among variables (negation of variables included) connected with ORs. In terms of set operations, it is a compound statement obtained by Intersection among variables connected with Unions.

Examples

  • $(A lor B) land (A lor C) land (B lor C lor D)$

  • $(P cup Q) cap (Q cup R)$

Disjunctive Normal Form

A compound statement is in disjunctive normal form if it is obtained by operating OR among variables (negation of variables included) connected with ANDs. In terms of set operations, it is a compound statement obtained by Union among variables connected with Intersections.

Examples

  • $(A land B) lor (A land C) lor (B land C land D)$

  • $(P cap Q) cup (Q cap R)$

Discrete Mathematics – Predicate Logic

Predicate Logic deals with predicates, which are propositions containing variables.

Predicate Logic – Definition

A predicate is an expression of one or more variables defined on some specific domain. A predicate with variables can be made a proposition by either assigning a value to the variable or by quantifying the variable.

The following are some examples of predicates −

  • Let E(x, y) denote “x = y”
  • Let X(a, b, c) denote “a + b + c = 0”
  • Let M(x, y) denote “x is married to y”

Well Formed Formula

Well Formed Formula (wff) is a predicate holding any of the following −

  • All propositional constants and propositional variables are wffs

  • If x is a variable and Y is a wff, $forall x Y$ and $exists x Y$ are also wff

  • Truth value and false values are wffs

  • Each atomic formula is a wff

  • All connectives connecting wffs are wffs

Quantifiers

The variable of predicates is quantified by quantifiers. There are two types of quantifier in predicate logic − Universal Quantifier and Existential Quantifier.

Universal Quantifier

Universal quantifier states that the statements within its scope are true for every value of the specific variable. It is denoted by the symbol $forall$.

$forall x P(x)$ is read as for every value of x, P(x) is true.

Example − “Man is mortal” can be transformed into the propositional form $forall x P(x)$ where P(x) is the predicate which denotes x is mortal and the universe of discourse is all men.

Existential Quantifier

Existential quantifier states that the statements within its scope are true for some values of the specific variable. It is denoted by the symbol $exists $.

$exists x P(x)$ is read as for some values of x, P(x) is true.

Example − “Some people are dishonest” can be transformed into the propositional form $exists x P(x)$ where P(x) is the predicate which denotes x is dishonest and the universe of discourse is some people.

Nested Quantifiers

If we use a quantifier that appears within the scope of another quantifier, it is called nested quantifier.

Example

  • $forall a: exists b: P (x, y)$ where $P (a, b)$ denotes $a + b = 0$

  • $forall a: forall: b: forall: c: P (a, b, c)$ where $P (a, b)$ denotes $a + (b + c) = (a + b) + c$

Note − $forall: a: exists b: P (x, y) ne exists a: forall b: P (x, y)$

Discrete Mathematics – Rules of Inference

To deduce new statements from the statements whose truth that we already know, Rules of Inference are used.

What are Rules of Inference for?

Mathematical logic is often used for logical proofs. Proofs are valid arguments that determine the truth values of mathematical statements.

An argument is a sequence of statements. The last statement is the conclusion and all its preceding statements are called premises (or hypothesis). The symbol “$therefore$”, (read therefore) is placed before the conclusion. A valid argument is one where the conclusion follows from the truth values of the premises.

Rules of Inference provide the templates or guidelines for constructing valid arguments from the statements that we already have.

Table of Rules of Inference

Rule of Inference Name Rule of Inference Name

$$begin{matrix}
P \
hline
therefore P lor Q
end{matrix}$$

Addition

$$begin{matrix}
P lor Q \
lnot P \
hline
therefore Q
end{matrix}$$

Disjunctive Syllogism

$$begin{matrix}
P \
Q \
hline
therefore P land Q
end{matrix}$$

Conjunction

$$begin{matrix}
P rightarrow Q \
Q rightarrow R \
hline
therefore P rightarrow R
end{matrix}$$

Hypothetical Syllogism

$$begin{matrix}
P land Q\
hline
therefore P
end{matrix}$$

Simplification

$$begin{matrix}
( P rightarrow Q ) land (R rightarrow S) \
P lor R \
hline
therefore Q lor S
end{matrix}$$

Constructive Dilemma

$$begin{matrix}
P rightarrow Q \
P \
hline
therefore Q
end{matrix}$$

Modus Ponens

$$begin{matrix}
(P rightarrow Q) land (R rightarrow S) \
lnot Q lor lnot S \
hline
therefore lnot P lor lnot R
end{matrix}$$

Destructive Dilemma

$$begin{matrix}
P rightarrow Q \
lnot Q \
hline
therefore lnot P
end{matrix}$$

Modus Tollens

Addition

If P is a premise, we can use Addition rule to derive $ P lor Q $.

$$begin{matrix}
P \
hline
therefore P lor Q
end{matrix}$$

Example

Let P be the proposition, “He studies very hard” is true

Therefore − “Either he studies very hard Or he is a very bad student.” Here Q is the proposition “he is a very bad student”.

Conjunction

If P and Q are two premises, we can use Conjunction rule to derive $ P land Q $.

$$begin{matrix}
P \
Q \
hline
therefore P land Q
end{matrix}$$

Example

Let P − “He studies very hard”

Let Q − “He is the best boy in the class”

Therefore − “He studies very hard and he is the best boy in the class”

Simplification

If $P land Q$ is a premise, we can use Simplification rule to derive P.

$$begin{matrix}
P land Q\
hline
therefore P
end{matrix}$$

Example

“He studies very hard and he is the best boy in the class”, $P land Q$

Therefore − “He studies very hard”

Modus Ponens

If P and $P rightarrow Q$ are two premises, we can use Modus Ponens to derive Q.

$$begin{matrix}
P rightarrow Q \
P \
hline
therefore Q
end{matrix}$$

Example

“If you have a password, then you can log on to facebook”, $P rightarrow Q$

“You have a password”, P

Therefore − “You can log on to facebook”

Modus Tollens

If $P rightarrow Q$ and $lnot Q$ are two premises, we can use Modus Tollens to derive $lnot P$.

$$begin{matrix}
P rightarrow Q \
lnot Q \
hline
therefore lnot P
end{matrix}$$

Example

“If you have a password, then you can log on to facebook”, $P rightarrow Q$

“You cannot log on to facebook”, $lnot Q$

Therefore − “You do not have a password “

Disjunctive Syllogism

If $lnot P$ and $P lor Q$ are two premises, we can use Disjunctive Syllogism to derive Q.

$$begin{matrix}
lnot P \
P lor Q \
hline
therefore Q
end{matrix}$$

Example

“The ice cream is not vanilla flavored”, $lnot P$

“The ice cream is either vanilla flavored or chocolate flavored”, $P lor Q$

Therefore − “The ice cream is chocolate flavored”

Hypothetical Syllogism

If $P rightarrow Q$ and $Q rightarrow R$ are two premises, we can use Hypothetical Syllogism to derive $P rightarrow R$

$$begin{matrix}
P rightarrow Q \
Q rightarrow R \
hline
therefore P rightarrow R
end{matrix}$$

Example

“If it rains, I shall not go to school”, $P rightarrow Q$

“If I don”t go to school, I won”t need to do homework”, $Q rightarrow R$

Therefore − “If it rains, I won”t need to do homework”

Constructive Dilemma

If $( P rightarrow Q ) land (R rightarrow S)$ and $P lor R$ are two premises, we can use constructive dilemma to derive $Q lor S$.

$$begin{matrix}
( P rightarrow Q ) land (R rightarrow S) \
P lor R \
hline
therefore Q lor S
end{matrix}$$

Example

“If it rains, I will take a leave”, $( P rightarrow Q )$

“If it is hot outside, I will go for a shower”, $(R rightarrow S)$

“Either it will rain or it is hot outside”, $P lor R$

Therefore − “I will take a leave or I will go for a shower”

Destructive Dilemma

If $(P rightarrow Q) land (R rightarrow S)$ and $ lnot Q lor lnot S $ are two premises, we can use destructive dilemma to derive $lnot P lor lnot R$.

$$begin{matrix}
(P rightarrow Q) land (R rightarrow S) \
lnot Q lor lnot S \
hline
therefore lnot P lor lnot R
end{matrix}$$

Example

“If it rains, I will take a leave”, $(P rightarrow Q )$

“If it is hot outside, I will go for a shower”, $(R rightarrow S)$

“Either I will not take a leave or I will not go for a shower”, $lnot Q lor lnot S$

Therefore − “Either it does not rain or it is not hot outside”

Operators & Postulates

Group Theory is a branch of mathematics and abstract algebra that defines an algebraic structure named as group. Generally, a group comprises of a set of elements and an operation over any two elements on that set to form a third element also in that set.

In 1854, Arthur Cayley, the British Mathematician, gave the modern definition of group for the first time −

“A set of symbols all of them different, and such that the product of any two of them (no matter in what order), or the product of any one of them into itself, belongs to the set, is said to be a group. These symbols are not in general convertible [commutative], but are associative.”

In this chapter, we will know about operators and postulates that form the basics of set theory, group theory and Boolean algebra.

Any set of elements in a mathematical system may be defined with a set of operators and a number of postulates.

A binary operator defined on a set of elements is a rule that assigns to each pair of elements a unique element from that set. For example, given the set $ A = lbrace 1, 2, 3, 4, 5 rbrace $, we can say $otimes$ is a binary operator for the operation $c = a otimes b$, if it specifies a rule for finding c for the pair of $(a,b)$, such that $a,b,c in A$.

The postulates of a mathematical system form the basic assumptions from which rules can be deduced. The postulates are −

Closure

A set is closed with respect to a binary operator if for every pair of elements in the set, the operator finds a unique element from that set.

Example

Let $A = lbrace 0, 1, 2, 3, 4, 5, dots rbrace$

This set is closed under binary operator into $(ast)$, because for the operation $c = a ast b$, for any $a, b in A$, the product $c in A$.

The set is not closed under binary operator divide $(div)$, because, for the operation $c = a div b$, for any $a, b in A$, the product c may not be in the set A. If $a = 7, b = 2$, then $c = 3.5$. Here $a,b in A$ but $c notin A$.

Associative Laws

A binary operator $otimes$ on a set A is associative when it holds the following property −

$(x otimes y) otimes z = x otimes (y otimes z)$, where $x, y, z in A $

Example

Let $A = lbrace 1, 2, 3, 4 rbrace$

The operator plus $( + )$ is associative because for any three elements, $x,y,z in A$, the property $(x + y) + z = x + ( y + z )$ holds.

The operator minus $( – )$ is not associative since

$$( x – y ) – z ne x – ( y – z )$$

Commutative Laws

A binary operator $otimes$ on a set A is commutative when it holds the following property −

$x otimes y = y otimes x$, where $x, y in A$

Example

Let $A = lbrace 1, 2, 3, 4 rbrace$

The operator plus $( + )$ is commutative because for any two elements, $x,y in A$, the property $x + y = y + x$ holds.

The operator minus $( – )$ is not associative since

$$x – y ne y – x$$

Distributive Laws

Two binary operators $otimes$ and $circledast$ on a set A, are distributive over operator $circledast$ when the following property holds −

$x otimes (y circledast z) = (x otimes y) circledast (x otimes z)$, where $x, y, z in A $

Example

Let $A = lbrace 1, 2, 3, 4 rbrace$

The operators into $( * )$ and plus $( + )$ are distributive over operator + because for any three elements, $x,y,z in A$, the property $x * ( y + z ) = ( x * y ) + ( x * z )$ holds.

However, these operators are not distributive over $*$ since

$$x + ( y * z ) ne ( x + y ) * ( x + z )$$

Identity Element

A set A has an identity element with respect to a binary operation $otimes$ on A, if there exists an element $e in A$, such that the following property holds −

$e otimes x = x otimes e$, where $x in A$

Example

Let $Z = lbrace 0, 1, 2, 3, 4, 5, dots rbrace$

The element 1 is an identity element with respect to operation $*$ since for any element $x in Z$,

$$1 * x = x * 1$$

On the other hand, there is no identity element for the operation minus $( – )$

Inverse

If a set A has an identity element $e$ with respect to a binary operator $otimes $, it is said to have an inverse whenever for every element $x in A$, there exists another element $y in A$, such that the following property holds −

$$x otimes y = e$$

Example

Let $A = lbrace dots -4, -3, -2, -1, 0, 1, 2, 3, 4, 5, dots rbrace$

Given the operation plus $( + )$ and $e = 0$, the inverse of any element x is $(-x)$ since $x + (x) = 0$

De Morgan”s Law

De Morgan’s Laws gives a pair of transformations between union and intersection of two (or more) sets in terms of their complements. The laws are −

$$(A cup B)” = A” cap B”$$

$$(A cap B)” = A” cup B”$$

Example

Let $A = lbrace 1, 2, 3, 4 rbrace ,B = lbrace 1, 3, 5, 7 rbrace$, and

Universal set $U = lbrace 1, 2, 3, dots, 9, 10 rbrace$

$A” = lbrace 5, 6, 7, 8, 9, 10 rbrace$

$B” = lbrace 2, 4, 6, 8, 9, 10 rbrace$

$A cup B = lbrace 1, 2, 3, 4, 5, 7 rbrace$

$A cap B = lbrace 1, 3 rbrace $

$(A cup B)” = lbrace 6, 8, 9, 10 rbrace$

$A” cap B” = lbrace 6, 8, 9, 10 rbrace$

Thus, we see that $(A cup B)” = A” cap B”$

$(A cap B)” = lbrace 2, 4, 5, 6, 7, 8, 9, 10 rbrace$

$A” cup B” = lbrace 2, 4, 5, 6, 7, 8, 9, 10 rbrace$

Thus, we see that $(A cap B)” = A” cup B”$

Discrete Mathematics – Group Theory

Semigroup

A finite or infinite set $‘S’$ with a binary operation $‘omicron’$ (Composition) is called semigroup if it holds following two conditions simultaneously −

  • Closure − For every pair $(a, b) in S, :(a omicron b)$ has to be present in the set $S$.

  • Associative − For every element $a, b, c in S, (a omicron b) omicron c = a omicron (b omicron c)$ must hold.

Example

The set of positive integers (excluding zero) with addition operation is a semigroup. For example, $ S = lbrace 1, 2, 3, dots rbrace $

Here closure property holds as for every pair $(a, b) in S, (a + b)$ is present in the set S. For example, $1 + 2 = 3 in S]$

Associative property also holds for every element $a, b, c in S, (a + b) + c = a + (b + c)$. For example, $(1 + 2) + 3 = 1 + (2 + 3) = 5$

Monoid

A monoid is a semigroup with an identity element. The identity element (denoted by $e$ or E) of a set S is an element such that $(a omicron e) = a$, for every element $a in S$. An identity element is also called a unit element. So, a monoid holds three properties simultaneously − Closure, Associative, Identity element.

Example

The set of positive integers (excluding zero) with multiplication operation is a monoid. $S = lbrace 1, 2, 3, dots rbrace $

Here closure property holds as for every pair $(a, b) in S, (a times b)$ is present in the set S. [For example, $1 times 2 = 2 in S$ and so on]

Associative property also holds for every element $a, b, c in S, (a times b) times c = a times (b times c)$ [For example, $(1 times 2) times 3 = 1 times (2 times 3) = 6$ and so on]

Identity property also holds for every element $a in S, (a times e) = a$ [For example, $(2 times 1) = 2, (3 times 1) = 3$ and so on]. Here identity element is 1.

Group

A group is a monoid with an inverse element. The inverse element (denoted by I) of a set S is an element such that $(a omicron I) = (I omicron a) = a$, for each element $a in S$. So, a group holds four properties simultaneously – i) Closure, ii) Associative, iii) Identity element, iv) Inverse element. The order of a group G is the number of elements in G and the order of an element in a group is the least positive integer n such that an is the identity element of that group G.

Examples

The set of $N times N$ non-singular matrices form a group under matrix multiplication operation.

The product of two $N times N$ non-singular matrices is also an $N times N$ non-singular matrix which holds closure property.

Matrix multiplication itself is associative. Hence, associative property holds.

The set of $N times N$ non-singular matrices contains the identity matrix holding the identity element property.

As all the matrices are non-singular they all have inverse elements which are also nonsingular matrices. Hence, inverse property also holds.

Abelian Group

An abelian group G is a group for which the element pair $(a,b) in G$ always holds commutative law. So, a group holds five properties simultaneously – i) Closure, ii) Associative, iii) Identity element, iv) Inverse element, v) Commutative.

Example

The set of positive integers (including zero) with addition operation is an abelian group. $G = lbrace 0, 1, 2, 3, dots rbrace$

Here closure property holds as for every pair $(a, b) in S, (a + b)$ is present in the set S. [For example, $1 + 2 = 2 in S$ and so on]

Associative property also holds for every element $a, b, c in S, (a + b) + c = a + (b + c)$ [For example, $(1 +2) + 3 = 1 + (2 + 3) = 6$ and so on]

Identity property also holds for every element $a in S, (a times e) = a$ [For example, $(2 times 1) = 2, (3 times 1) = 3$ and so on]. Here, identity element is 1.

Commutative property also holds for every element $a in S, (a times b) = (b times a)$ [For example, $(2 times 3) = (3 times 2) = 3$ and so on]

Cyclic Group and Subgroup

A cyclic group is a group that can be generated by a single element. Every element of a cyclic group is a power of some specific element which is called a generator. A cyclic group can be generated by a generator ‘g’, such that every other element of the group can be written as a power of the generator ‘g’.

Example

The set of complex numbers $lbrace 1,-1, i, -i rbrace$ under multiplication operation is a cyclic group.

There are two generators − $i$ and $–i$ as $i^1 = i, i^2 = -1, i^3 = -i, i^4 = 1$ and also $(–i)^1 = -i, (–i)^2 = -1, (–i)^3 = i, (–i)^4 = 1$ which covers all the elements of the group. Hence, it is a cyclic group.

Note − A cyclic group is always an abelian group but not every abelian group is a cyclic group. The rational numbers under addition is not cyclic but is abelian.

A subgroup H is a subset of a group G (denoted by $H ≤ G$) if it satisfies the four properties simultaneously − Closure, Associative, Identity element, and Inverse.

A subgroup H of a group G that does not include the whole group G is called a proper subgroup (Denoted by $H < G$). A subgroup of a cyclic group is cyclic and a abelian subgroup is also abelian.

Example

Let a group $G = lbrace 1, i, -1, -i rbrace$

Then some subgroups are $H_1 = lbrace 1 rbrace, H_2 = lbrace 1,-1 rbrace$,

This is not a subgroup − $H_3 = lbrace 1, i rbrace$ because that $(i)^{-1} = -i$ is not in $H_3$

Partially Ordered Set (POSET)

A partially ordered set consists of a set with a binary relation which is reflexive, antisymmetric and transitive. “Partially ordered set” is abbreviated as POSET.

Examples

  • The set of real numbers under binary operation less than or equal to $(le)$ is a poset.

    Let the set $S = lbrace 1, 2, 3 rbrace$ and the operation is $le$

    The relations will be $lbrace(1, 1), (2, 2), (3, 3), (1, 2), (1, 3), (2, 3)rbrace$

    This relation R is reflexive as $lbrace (1, 1), (2, 2), (3, 3)rbrace in R$

    This relation R is anti-symmetric, as

    $lbrace (1, 2), (1, 3), (2, 3) rbrace in R and lbrace (1, 2), (1, 3), (2, 3) rbrace ∉ R$

    This relation R is also transitive as $lbrace (1,2), (2,3), (1,3)rbrace in R$.

    Hence, it is a poset.

  • The vertex set of a directed acyclic graph under the operation ‘reachability’ is a poset.

Hasse Diagram

The Hasse diagram of a poset is the directed graph whose vertices are the element of that poset and the arcs covers the pairs (x, y) in the poset. If in the poset $x < y$, then the point x appears lower than the point y in the Hasse diagram. If $x<y<z$ in the poset, then the arrow is not shown between x and z as it is implicit.

Example

The poset of subsets of $lbrace 1, 2, 3 rbrace = lbrace emptyset, lbrace 1 rbrace, lbrace 2 rbrace, lbrace 3 rbrace, lbrace 1, 2 rbrace, lbrace 1, 3 rbrace, lbrace 2, 3 rbrace, lbrace 1, 2, 3 rbrace rbrace$ is shown by the following Hasse diagram −

Hasse Diagram

Linearly Ordered Set

A Linearly ordered set or Total ordered set is a partial order set in which every pair of element is comparable. The elements $a, b in S$ are said to be comparable if either $a le b$ or $b le a$ holds. Trichotomy law defines this total ordered set. A totally ordered set can be defined as a distributive lattice having the property $lbrace a lor b, a land b rbrace = lbrace a, b rbrace$ for all values of a and b in set S.

Example

The powerset of $lbrace a, b rbrace$ ordered by subseteq is a totally ordered set as all the elements of the power set $P = lbrace emptyset, lbrace a rbrace, lbrace b rbrace, lbrace a, brbrace rbrace$ are comparable.

Example of non-total order set

A set $S = lbrace 1, 2, 3, 4, 5, 6 rbrace$ under operation x divides y is not a total ordered set.

Here, for all $(x, y) in S, x | y$ have to hold but it is not true that 2 | 3, as 2 does not divide 3 or 3 does not divide 2. Hence, it is not a total ordered set.

Lattice

A lattice is a poset $(L, le)$ for which every pair $lbrace a, b rbrace in L$ has a least upper bound (denoted by $a lor b$) and a greatest lower bound (denoted by $a land b$). LUB $(lbrace a,b rbrace)$ is called the join of a and b. GLB $(lbrace a,b rbrace )$ is called the meet of a and b.

Lattice

Example

Lattice Example

This above figure is a lattice because for every pair $lbrace a, b rbrace in L$, a GLB and a LUB exists.

Lattice Example

This above figure is a not a lattice because $GLB (a, b)$ and $LUB (e, f)$ does not exist.

Some other lattices are discussed below −

Bounded Lattice

A lattice L becomes a bounded lattice if it has a greatest element 1 and a least element 0.

Complemented Lattice

A lattice L becomes a complemented lattice if it is a bounded lattice and if every element in the lattice has a complement. An element x has a complement x’ if $exists x(x land x’=0 and x lor x’ = 1)$

Distributive Lattice

If a lattice satisfies the following two distribute properties, it is called a distributive lattice.

  • $a lor (b land c) = (a lor b) land (a lor c)$

  • $a land (b lor c) = (a land b) lor (a land c)$

Modular Lattice

If a lattice satisfies the following property, it is called modular lattice.

$a land( b lor (a land d)) = (a land b) lor (a land d)$

Properties of Lattices

Idempotent Properties

  • $a lor a = a$

  • $a land a = a$

Absorption Properties

  • $a lor (a land b) = a$

  • $a land (a lor b) = a$

Commutative Properties

  • $a lor b = b lor a$

  • $a land b = b land a$

Associative Properties

  • $a lor (b lor c) = (a lor b) lor c$

  • $a land (b land c) = (a land b) land c$

Dual of a Lattice

The dual of a lattice is obtained by interchanging the ”$lor$” and ”$land$” operations.

Example

The dual of $lbrack a lor (b land c) rbrack is lbrack a land (b lor c) rbrack$

Discrete Mathematics – Counting Theory

In daily lives, many a times one needs to find out the number of all possible outcomes for a series of events. For instance, in how many ways can a panel of judges comprising of 6 men and 4 women be chosen from among 50 men and 38 women? How many different 10 lettered PAN numbers can be generated such that the first five letters are capital alphabets, the next four are digits and the last is again a capital letter. For solving these problems, mathematical theory of counting are used. Counting mainly encompasses fundamental counting rule, the permutation rule, and the combination rule.

The Rules of Sum and Product

The Rule of Sum and Rule of Product are used to decompose difficult counting problems into simple problems.

  • The Rule of Sum − If a sequence of tasks $T_1, T_2, dots, T_m$ can be done in $w_1, w_2, dots w_m$ ways respectively (the condition is that no tasks can be performed simultaneously), then the number of ways to do one of these tasks is $w_1 + w_2 + dots +w_m$. If we consider two tasks A and B which are disjoint (i.e. $A cap B = emptyset$), then mathematically $|A cup B| = |A| + |B|$

  • The Rule of Product − If a sequence of tasks $T_1, T_2, dots, T_m$ can be done in $w_1, w_2, dots w_m$ ways respectively and every task arrives after the occurrence of the previous task, then there are $w_1 times w_2 times dots times w_m$ ways to perform the tasks. Mathematically, if a task B arrives after a task A, then $|A times B| = |A|times|B|$

Example

Question − A boy lives at X and wants to go to School at Z. From his home X he has to first reach Y and then Y to Z. He may go X to Y by either 3 bus routes or 2 train routes. From there, he can either choose 4 bus routes or 5 train routes to reach Z. How many ways are there to go from X to Z?

Solution − From X to Y, he can go in $3 + 2 = 5$ ways (Rule of Sum). Thereafter, he can go Y to Z in $4 + 5 = 9$ ways (Rule of Sum). Hence from X to Z he can go in $5 times 9 = 45$ ways (Rule of Product).

Permutations

A permutation is an arrangement of some elements in which order matters. In other words a Permutation is an ordered Combination of elements.

Examples

  • From a set S ={x, y, z} by taking two at a time, all permutations are −

    $ xy, yx, xz, zx, yz, zy $.

  • We have to form a permutation of three digit numbers from a set of numbers $S = lbrace 1, 2, 3 rbrace$. Different three digit numbers will be formed when we arrange the digits. The permutation will be = 123, 132, 213, 231, 312, 321

Number of Permutations

The number of permutations of ‘n’ different things taken ‘r’ at a time is denoted by $n_{P_{r}}$

$$n_{P_{r}} = frac{n!}{(n – r)!}$$

where $n! = 1.2.3. dots (n – 1).n$

Proof − Let there be ‘n’ different elements.

There are n number of ways to fill up the first place. After filling the first place (n-1) number of elements is left. Hence, there are (n-1) ways to fill up the second place. After filling the first and second place, (n-2) number of elements is left. Hence, there are (n-2) ways to fill up the third place. We can now generalize the number of ways to fill up r-th place as [n – (r–1)] = n–r+1

So, the total no. of ways to fill up from first place up to r-th-place −

$n_{ P_{ r } } = n (n-1) (n-2)….. (n-r + 1)$

$= [n(n-1)(n-2) … (n-r + 1)] [(n-r)(n-r-1) dots 3.2.1] / [(n-r)(n-r-1) dots 3.2.1]$

Hence,

$n_{ P_{ r } } = n! / (n-r)!$

Some important formulas of permutation

  • If there are n elements of which $a_1$ are alike of some kind, $a_2$ are alike of another kind; $a_3$ are alike of third kind and so on and $a_r$ are of $r^{th}$ kind, where $(a_1 + a_2 + … a_r) = n$.

    Then, number of permutations of these n objects is = $n! / [(a_1!(a_2!) dots (a_r!)]$.

  • Number of permutations of n distinct elements taking n elements at a time = $n_{P_n} = n!$

  • The number of permutations of n dissimilar elements taking r elements at a time, when x particular things always occupy definite places = $n-x_{p_{r-x}}$

  • The number of permutations of n dissimilar elements when r specified things always come together is − $r! (n−r+1)!$

  • The number of permutations of n dissimilar elements when r specified things never come together is − $n!–[r! (n−r+1)!]$

  • The number of circular permutations of n different elements taken x elements at time = $^np_{x}/x$

  • The number of circular permutations of n different things = $^np_{n}/n$

Some Problems

Problem 1 − From a bunch of 6 different cards, how many ways we can permute it?

Solution − As we are taking 6 cards at a time from a deck of 6 cards, the permutation will be $^6P_{6} = 6! = 720$

Problem 2 − In how many ways can the letters of the word ”READER” be arranged?

Solution − There are 6 letters word (2 E, 1 A, 1D and 2R.) in the word ”READER”.

The permutation will be $= 6! /: [(2!) (1!)(1!)(2!)] = 180.$

Problem 3 − In how ways can the letters of the word ”ORANGE” be arranged so that the consonants occupy only the even positions?

Solution − There are 3 vowels and 3 consonants in the word ”ORANGE”. Number of ways of arranging the consonants among themselves $= ^3P_{3} = 3! = 6$. The remaining 3 vacant places will be filled up by 3 vowels in $^3P_{3} = 3! = 6$ ways. Hence, the total number of permutation is $6 times 6 = 36$

Combinations

A combination is selection of some given elements in which order does not matter.

The number of all combinations of n things, taken r at a time is −

$$^nC_{ { r } } = frac { n! } { r!(n-r)! }$$

Problem 1

Find the number of subsets of the set $lbrace1, 2, 3, 4, 5, 6rbrace$ having 3 elements.

Solution

The cardinality of the set is 6 and we have to choose 3 elements from the set. Here, the ordering does not matter. Hence, the number of subsets will be $^6C_{3} = 20$.

Problem 2

There are 6 men and 5 women in a room. In how many ways we can choose 3 men and 2 women from the room?

Solution

The number of ways to choose 3 men from 6 men is $^6C_{3}$ and the number of ways to choose 2 women from 5 women is $^5C_{2}$

Hence, the total number of ways is − $^6C_{3} times ^5C_{2} = 20 times 10 = 200$

Problem 3

How many ways can you choose 3 distinct groups of 3 students from total 9 students?

Solution

Let us number the groups as 1, 2 and 3

For choosing 3 students for 1st group, the number of ways − $^9C_{3}$

The number of ways for choosing 3 students for 2nd group after choosing 1st group − $^6C_{3}$

The number of ways for choosing 3 students for 3rd group after choosing 1st and 2nd group − $^3C_{3}$

Hence, the total number of ways $= ^9C_{3} times ^6C_{3} times ^3C_{3} = 84 times 20 times 1 = 1680$

Pascal”s Identity

Pascal”s identity, first derived by Blaise Pascal in 17th century, states that the number of ways to choose k elements from n elements is equal to the summation of number of ways to choose (k-1) elements from (n-1) elements and the number of ways to choose elements from n-1 elements.

Mathematically, for any positive integers k and n: $^nC_{k} = ^n{^-}^1C_{k-1} + ^n{^-}^1{C_k}$

Proof

$$^n{^-}^1C_{k-1} + ^n{^-}^1{C_k}$$

$= frac{ (n-1)! } { (k-1)!(n-k)! } + frac{ (n-1)! } { k!(n-k-1)! }$

$= (n-1)!(frac{ k } { k!(n-k)! } + frac{ n-k } { k!(n-k)! } )$

$= (n-1)! frac{ n } { k!(n-k)! }$

$= frac{ n! } { k!(n-k)! }$

$= n_{ C_{ k } }$

Pigeonhole Principle

In 1834, German mathematician, Peter Gustav Lejeune Dirichlet, stated a principle which he called the drawer principle. Now, it is known as the pigeonhole principle.

Pigeonhole Principle states that if there are fewer pigeon holes than total number of pigeons and each pigeon is put in a pigeon hole, then there must be at least one pigeon hole with more than one pigeon. If n pigeons are put into m pigeonholes where n > m, there”s a hole with more than one pigeon.

Examples

  • Ten men are in a room and they are taking part in handshakes. If each person shakes hands at least once and no man shakes the same man’s hand more than once then two men took part in the same number of handshakes.

  • There must be at least two people in a class of 30 whose names start with the same alphabet.

The Inclusion-Exclusion principle

The Inclusion-exclusion principle computes the cardinal number of the union of multiple non-disjoint sets. For two sets A and B, the principle states −

$|A cup B| = |A| + |B| – |A cap B|$

For three sets A, B and C, the principle states −

$|A cup B cup C | = |A| + |B| + |C| – |A cap B| – |A cap C| – |B cap C| + |A cap B cap C |$

The generalized formula –

$|bigcup_{i=1}^{n}A_i|=sumlimits_{1leq i<j<kleq n}|A_i cap A_j|+sumlimits_{1leq i<j<kleq n}|A_i cap A_j cap A_k|- dots +(-1)^{n-1}|A_1 cap dots cap A_2|$

Problem 1

How many integers from 1 to 50 are multiples of 2 or 3 but not both?

Solution

From 1 to 100, there are $50/2 = 25$ numbers which are multiples of 2.

There are $50/3 = 16$ numbers which are multiples of 3.

There are $50/6 = 8$ numbers which are multiples of both 2 and 3.

So, $|A|=25$, $|B|=16$ and $|A cap B|= 8$.

$|A cup B| = |A| + |B| – |A cap B| = 25 + 16 – 8 = 33$

Problem 2

In a group of 50 students 24 like cold drinks and 36 like hot drinks and each student likes at least one of the two drinks. How many like both coffee and tea?

Solution

Let X be the set of students who like cold drinks and Y be the set of people who like hot drinks.

So, $| X cup Y | = 50$, $|X| = 24$, $|Y| = 36$

$|X cap Y| = |X| + |Y| – |X cup Y| = 24 + 36 – 50 = 60 – 50 = 10$

Hence, there are 10 students who like both tea and coffee.

Discrete Mathematics – Probability

Closely related to the concepts of counting is Probability. We often try to guess the results of games of chance, like card games, slot machines, and lotteries; i.e. we try to find the likelihood or probability that a particular result with be obtained.

Probability can be conceptualized as finding the chance of occurrence of an event. Mathematically, it is the study of random processes and their outcomes. The laws of probability have a wide applicability in a variety of fields like genetics, weather forecasting, opinion polls, stock markets etc.

Basic Concepts

Probability theory was invented in the 17th century by two French mathematicians, Blaise Pascal and Pierre de Fermat, who were dealing with mathematical problems regarding of chance.

Before proceeding to details of probability, let us get the concept of some definitions.

Random Experiment − An experiment in which all possible outcomes are known and the exact output cannot be predicted in advance is called a random experiment. Tossing a fair coin is an example of random experiment.

Sample Space − When we perform an experiment, then the set S of all possible outcomes is called the sample space. If we toss a coin, the sample space $S = left { H, T right }$

Event − Any subset of a sample space is called an event. After tossing a coin, getting Head on the top is an event.

The word “probability” means the chance of occurrence of a particular event. The best we can say is how likely they are to happen, using the idea of probability.

$Probability:of:occurence:of:an:event = frac{Total:number:of:favourable : outcome}{Total:number:of:Outcomes}$

As the occurrence of any event varies between 0% and 100%, the probability varies between 0 and 1.

Steps to find the probability

Step 1 − Calculate all possible outcomes of the experiment.

Step 2 − Calculate the number of favorable outcomes of the experiment.

Step 3 − Apply the corresponding probability formula.

Tossing a Coin

If a coin is tossed, there are two possible outcomes − Heads $(H)$ or Tails $(T)$

So, Total number of outcomes = 2

Hence, the probability of getting a Head $(H)$ on top is 1/2 and the probability of getting a Tails $(T)$ on top is 1/2

Throwing a Dice

When a dice is thrown, six possible outcomes can be on the top − $1, 2, 3, 4, 5, 6$.

The probability of any one of the numbers is 1/6

The probability of getting even numbers is 3/6 = 1/2

The probability of getting odd numbers is 3/6 = 1/2

Taking Cards From a Deck

From a deck of 52 cards, if one card is picked find the probability of an ace being drawn and also find the probability of a diamond being drawn.

Total number of possible outcomes − 52

Outcomes of being an ace − 4

Probability of being an ace = 4/52 = 1/13

Probability of being a diamond = 13/52 = 1/4

Probability Axioms

  • The probability of an event always varies from 0 to 1. $[0 leq P(x) leq 1]$

  • For an impossible event the probability is 0 and for a certain event the probability is 1.

  • If the occurrence of one event is not influenced by another event, they are called mutually exclusive or disjoint.

    If $A_1, A_2….A_n$ are mutually exclusive/disjoint events, then $P(A_i cap A_j) = emptyset $ for $i ne j$ and $P(A_1 cup A_2 cup…. A_n) = P(A_1) + P(A_2)+….. P(A_n)$

Properties of Probability

  • If there are two events $x$ and $overline{x}$which are complementary, then the probability of the complementary event is −

    $$p(overline{x}) = 1-p(x)$$

  • For two non-disjoint events A and B, the probability of the union of two events −

    $P(A cup B) = P(A) + P(B)$

  • If an event A is a subset of another event B (i.e. $A subset B$), then the probability of A is less than or equal to the probability of B. Hence, $A subset B$ implies $P(A) leq p(B)$

Conditional Probability

The conditional probability of an event B is the probability that the event will occur given an event A has already occurred. This is written as $P(B|A)$.

Mathematically − $ P(B|A) = P(A cap B)/ P(A)$

If event A and B are mutually exclusive, then the conditional probability of event B after the event A will be the probability of event B that is $P(B)$.

Problem 1

In a country 50% of all teenagers own a cycle and 30% of all teenagers own a bike and cycle. What is the probability that a teenager owns bike given that the teenager owns a cycle?

Solution

Let us assume A is the event of teenagers owning only a cycle and B is the event of teenagers owning only a bike.

So, $P(A) = 50/100 = 0.5$ and $P(A cap B) = 30/100 = 0.3$ from the given problem.

$P(B|A) = P(A cap B)/ P(A) = 0.3/ 0.5 = 0.6$

Hence, the probability that a teenager owns bike given that the teenager owns a cycle is 60%.

Problem 2

In a class, 50% of all students play cricket and 25% of all students play cricket and volleyball. What is the probability that a student plays volleyball given that the student plays cricket?

Solution

Let us assume A is the event of students playing only cricket and B is the event of students playing only volleyball.

So, $P(A) = 50/100 =0.5$ and $P(A cap B) = 25/ 100 =0.25$ from the given problem.

$Plgroup Brvert A rgroup= Plgroup Acap Brgroup/Plgroup A rgroup =0.25/0.5=0.5$

Hence, the probability that a student plays volleyball given that the student plays cricket is 50%.

Problem 3

Six good laptops and three defective laptops are mixed up. To find the defective laptops all of them are tested one-by-one at random. What is the probability to find both of the defective laptops in the first two pick?

Solution

Let A be the event that we find a defective laptop in the first test and B be the event that we find a defective laptop in the second test.

Hence, $P(A cap B) = P(A)P(B|A) =3/9 times 2/8 = 1/12$

Bayes” Theorem

Theorem − If A and B are two mutually exclusive events, where $P(A)$ is the probability of A and $P(B)$ is the probability of B, $P(A | B)$ is the probability of A given that B is true. $P(B | A)$ is the probability of B given that A is true, then Bayes’ Theorem states −

$$P(A|B) = frac{P(B|A) P(A)}{sum_{i = 1}^{n}P(B|Ai)P(Ai)}$$

Application of Bayes” Theorem

  • In situations where all the events of sample space are mutually exclusive events.

  • In situations where either $P( A_i cap B )$ for each $A_i$ or $P( A_i )$ and $P(B|A_i)$ for each $A_i$ is known.

Problem

Consider three pen-stands. The first pen-stand contains 2 red pens and 3 blue pens; the second one has 3 red pens and 2 blue pens; and the third one has 4 red pens and 1 blue pen. There is equal probability of each pen-stand to be selected. If one pen is drawn at random, what is the probability that it is a red pen?

Solution

Let $A_i$ be the event that ith pen-stand is selected.

Here, i = 1,2,3.

Since probability for choosing a pen-stand is equal, $P(A_i) = 1/3$

Let B be the event that a red pen is drawn.

The probability that a red pen is chosen among the five pens of the first pen-stand,

$P(B|A_1) = 2/5$

The probability that a red pen is chosen among the five pens of the second pen-stand,

$P(B|A_2) = 3/5$

The probability that a red pen is chosen among the five pens of the third pen-stand,

$P(B|A_3) = 4/5$

According to Bayes” Theorem,

$P(B) = P(A_1).P(B|A_1) + P(A_2).P(B|A_2) + P(A_3).P(B|A_3)$

$= 1/3 . 2/5: +: 1/3 . 3/5: +: 1/3 . 4/5$

$= 3/5$

Mathematical Induction

Mathematical induction, is a technique for proving results or establishing statements for natural numbers. This part illustrates the method through a variety of examples.

Definition

Mathematical Induction is a mathematical technique which is used to prove a statement, a formula or a theorem is true for every natural number.

The technique involves two steps to prove a statement, as stated below −

Step 1(Base step) − It proves that a statement is true for the initial value.

Step 2(Inductive step) − It proves that if the statement is true for the nth iteration (or number n), then it is also true for (n+1)th iteration ( or number n+1).

How to Do It

Step 1 − Consider an initial value for which the statement is true. It is to be shown that the statement is true for n = initial value.

Step 2 − Assume the statement is true for any value of n = k. Then prove the statement is true for n = k+1. We actually break n = k+1 into two parts, one part is n = k (which is already proved) and try to prove the other part.

Problem 1

$3^n-1$ is a multiple of 2 for n = 1, 2, …

Solution

Step 1 − For $n = 1, 3^1-1 = 3-1 = 2$ which is a multiple of 2

Step 2 − Let us assume $3^n-1$ is true for $n=k$, Hence, $3^k -1$ is true (It is an assumption)

We have to prove that $3^{k+1}-1$ is also a multiple of 2

$3^{k+1} – 1 = 3 times 3^k – 1 = (2 times 3^k) + (3^k – 1)$

The first part $(2 times 3k)$ is certain to be a multiple of 2 and the second part $(3k -1)$ is also true as our previous assumption.

Hence, $3^{k+1} – 1$ is a multiple of 2.

So, it is proved that $3^n – 1$ is a multiple of 2.

Problem 2

$1 + 3 + 5 + … + (2n-1) = n^2$ for $n = 1, 2, dots $

Solution

Step 1 − For $n=1, 1 = 1^2$, Hence, step 1 is satisfied.

Step 2 − Let us assume the statement is true for $n=k$.

Hence, $1 + 3 + 5 + dots + (2k-1) = k^2$ is true (It is an assumption)

We have to prove that $1 + 3 + 5 + … + (2(k+1)-1) = (k+1)^2$ also holds

$1 + 3 + 5 + dots + (2(k+1) – 1)$

$= 1 + 3 + 5 + dots + (2k+2 – 1)$

$= 1 + 3 + 5 + dots + (2k + 1)$

$= 1 + 3 + 5 + dots + (2k – 1) + (2k + 1)$

$= k^2 + (2k + 1)$

$= (k + 1)^2$

So, $1 + 3 + 5 + dots + (2(k+1) – 1) = (k+1)^2$ hold which satisfies the step 2.

Hence, $1 + 3 + 5 + dots + (2n – 1) = n^2$ is proved.

Problem 3

Prove that $(ab)^n = a^nb^n$ is true for every natural number $n$

Solution

Step 1 − For $n=1, (ab)^1 = a^1b^1 = ab$, Hence, step 1 is satisfied.

Step 2 − Let us assume the statement is true for $n=k$, Hence, $(ab)^k = a^kb^k$ is true (It is an assumption).

We have to prove that $(ab)^{k+1} = a^{k+1}b^{k+1}$ also hold

Given, $(ab)^k = a^k b^k$

Or, $(ab)^k (ab) = (a^k b^k ) (ab)$ [Multiplying both side by ”ab”]

Or, $(ab)^{k+1} = (aa^k) ( bb^k)$

Or, $(ab)^{k+1} = (a^{k+1}b^{k+1})$

Hence, step 2 is proved.

So, $(ab)^n = a^nb^n$ is true for every natural number n.

Strong Induction

Strong Induction is another form of mathematical induction. Through this induction technique, we can prove that a propositional function, $P(n)$ is true for all positive integers, $n$, using the following steps −

  • Step 1(Base step) − It proves that the initial proposition $P(1)$ true.

  • Step 2(Inductive step) − It proves that the conditional statement $[P(1) land P(2) land P(3) land dots land P(k)] → P(k + 1)$ is true for positive integers $k$.

Discrete Mathematics – Recurrence Relation

In this chapter, we will discuss how recursive techniques can derive sequences and be used for solving counting problems. The procedure for finding the terms of a sequence in a recursive manner is called recurrence relation. We study the theory of linear recurrence relations and their solutions. Finally, we introduce generating functions for solving recurrence relations.

Definition

A recurrence relation is an equation that recursively defines a sequence where the next term is a function of the previous terms (Expressing $F_n$ as some combination of $F_i$ with $i < n$).

Example − Fibonacci series − $F_n = F_{n-1} + F_{n-2}$, Tower of Hanoi − $F_n = 2F_{n-1} + 1$

Linear Recurrence Relations

A linear recurrence equation of degree k or order k is a recurrence equation which is in the format $x_n= A_1 x_{n-1}+ A_2 x_{n-1}+ A_3 x_{n-1}+ dots A_k x_{n-k} $($A_n$ is a constant and $A_k neq 0$) on a sequence of numbers as a first-degree polynomial.

These are some examples of linear recurrence equations −

Recurrence relations Initial values Solutions
Fn = Fn-1 + Fn-2 a1 = a2 = 1 Fibonacci number
Fn = Fn-1 + Fn-2 a1 = 1, a2 = 3 Lucas Number
Fn = Fn-2 + Fn-3 a1 = a2 = a3 = 1 Padovan sequence
Fn = 2Fn-1 + Fn-2 a1 = 0, a2 = 1 Pell number

How to solve linear recurrence relation

Suppose, a two ordered linear recurrence relation is − $F_n = AF_{n-1} +BF_{n-2}$ where A and B are real numbers.

The characteristic equation for the above recurrence relation is −

$$x^2 – Ax – B = 0$$

Three cases may occur while finding the roots −

Case 1 − If this equation factors as $(x- x_1)(x- x_1) = 0$ and it produces two distinct real roots $x_1$ and $x_2$, then $F_n = ax_1^n+ bx_2^n$ is the solution. [Here, a and b are constants]

Case 2 − If this equation factors as $(x- x_1)^2 = 0$ and it produces single real root $x_1$, then $F_n = a x_1^n+ bn x_1^n$ is the solution.

Case 3 − If the equation produces two distinct complex roots, $x_1$ and $x_2$ in polar form $x_1 = r angle theta$ and $x_2 = r angle(- theta)$, then $F_n = r^n (a cos(ntheta)+ b sin(ntheta))$ is the solution.

Problem 1

Solve the recurrence relation $F_n = 5F_{n-1} – 6F_{n-2}$ where $F_0 = 1$ and $F_1 = 4$

Solution

The characteristic equation of the recurrence relation is −

$$x^2 – 5x + 6 = 0,$$

So, $(x – 3) (x – 2) = 0$

Hence, the roots are −

$x_1 = 3$ and $x_2 = 2$

The roots are real and distinct. So, this is in the form of case 1

Hence, the solution is −

$$F_n = ax_1^n + bx_2^n$$

Here, $F_n = a3^n + b2^n (As x_1 = 3 and x_2 = 2)$

Therefore,

$1 = F_0 = a3^0 + b2^0 = a+b$

$4 = F_1 = a3^1 + b2^1 = 3a+2b$

Solving these two equations, we get $ a = 2$ and $b = -1$

Hence, the final solution is −

$$F_n = 2.3^n + (-1) . 2^n = 2.3^n – 2^n $$

Problem 2

Solve the recurrence relation − $F_n = 10F_{n-1} – 25F_{n-2}$ where $F_0 = 3$ and $F_1 = 17$

Solution

The characteristic equation of the recurrence relation is −

$$ x^2 – 10x -25 = 0$$

So $(x – 5)^2 = 0$

Hence, there is single real root $x_1 = 5$

As there is single real valued root, this is in the form of case 2

Hence, the solution is −

$F_n = ax_1^n + bnx_1^n$

$3 = F_0 = a.5^0 +(b)(0.5)^0 = a$

$17 = F_1 = a.5^1 + b.1.5^1 = 5a+5b$

Solving these two equations, we get $a = 3$ and $b = 2/5$

Hence, the final solution is − $F_n = 3.5^n +( 2/5) .n.2^n $

Problem 3

Solve the recurrence relation $F_n = 2F_{n-1} – 2F_{n-2}$ where $F_0 = 1$ and $F_1 = 3$

Solution

The characteristic equation of the recurrence relation is −

$$x^2 -2x -2 = 0$$

Hence, the roots are −

$x_1 = 1 + i$ and $x_2 = 1 – i$

In polar form,

$x_1 = r angle theta$ and $x_2 = r angle(- theta),$ where $r = sqrt 2$ and $theta = frac{pi}{4}$

The roots are imaginary. So, this is in the form of case 3.

Hence, the solution is −

$F_n = (sqrt 2 )^n (a cos(n .sqcap /4) + b sin(n .sqcap /4))$

$1 = F_0 = (sqrt 2 )^0 (a cos(0 .sqcap /4) + b sin(0 .sqcap /4) ) = a$

$3 = F_1 = (sqrt 2 )^1 (a cos(1 .sqcap /4) + b sin(1 . sqcap /4) ) = sqrt 2 ( a/ sqrt 2 + b/ sqrt 2)$

Solving these two equations we get $a = 1$ and $b = 2$

Hence, the final solution is −

$F_n = (sqrt 2 )^n (cos(n .pi /4 ) + 2 sin(n .pi /4 ))$

Non-Homogeneous Recurrence Relation and Particular Solutions

A recurrence relation is called non-homogeneous if it is in the form

$F_n = AF_{n-1} + BF_{n-2} + f(n)$ where $f(n) ne 0$

Its associated homogeneous recurrence relation is $F_n = AF_{n–1} + BF_{n-2}$

The solution $(a_n)$ of a non-homogeneous recurrence relation has two parts.

First part is the solution $(a_h)$ of the associated homogeneous recurrence relation and the second part is the particular solution $(a_t)$.

$$a_n=a_h+a_t$$

Solution to the first part is done using the procedures discussed in the previous section.

To find the particular solution, we find an appropriate trial solution.

Let $f(n) = cx^n$ ; let $x^2 = Ax + B$ be the characteristic equation of the associated homogeneous recurrence relation and let $x_1$ and $x_2$ be its roots.

  • If $x ne x_1$ and $x ne x_2$, then $a_t = Ax^n$

  • If $x = x_1$, $x ne x_2$, then $a_t = Anx^n$

  • If $x = x_1 = x_2$, then $a_t = An^2x^n$

Example

Let a non-homogeneous recurrence relation be $F_n = AF_{n–1} + BF_{n-2} + f(n)$ with characteristic roots $x_1 = 2$ and $x_2 = 5$. Trial solutions for different possible values of $f(n)$ are as follows −

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