انت هنا الان : شبكة جامعة بابل > موقع الكلية > نظام التعليم الالكتروني > مشاهدة المحاضرة
الكلية كلية تكنولوجيا المعلومات
القسم قسم البرامجيات
المرحلة 1
أستاذ المادة فريال جاسم عبدالرزاق الحميداوي
19/03/2017 08:10:35
Sets and set operations: cont. Functions. Set identities Set Identities (analogous to logical equivalences) • Identity – A ? = A – A U = A • Domination – A U = U – A ? = ? • Idempotent – A A = A – A A = A ? ? ? ? ? ? CS 441 Discrete mathematics for CS M. Hauskrecht Set identities • Double complement – A = A • Commutative – A B = B A – A B = B A • Associative – A (B C) = (A B) C – A (B C) = (A B) C • Distributive – A (B C) = (A B) (A C) – A (B C) = (A B) (A C) ? ? ? ? ? ? ? ? ? ? ? ? ? ? ? ? ? ? ? ? ? ? 5 CS 441 Discrete mathematics for CS M. Hauskrecht Set identities • DeMorgan – (A B) = A B – (A B) = A B • Absorbtion Laws – A (A B) = A – A (A B) = A • Complement Laws – A A = U – A A = ? ? ? ? ? ? ? ? ? ? ? CS 441 Discrete mathematics for CS M. Hauskrecht Set identities • Set identities can be proved using membership tables. • List each combination of sets that an element can belong to. Then show that for each such a combination the element either belongs or does not belong to both sets in the identity. • Prove: (A ? B) = A B A B _ A _ B ____ A B _ _ A B 1 1 0 0 0 0 1 0 0 1 0 0 0 1 1 0 0 0 0 0 1 1 1 1 ? ? ? 6 CS 441 Discrete mathematics for CS M. Hauskrecht Generalized unions and itersections Definition: The union of a collection of sets is the set that contains those elements that are members of at least one set in the collection. Example: • Let Ai= {1,2,...,i} i =1,2,...,n • { ... } 1 2 1 n n i i A ? A ? A ? ? A ? ? {1 , 2 ,..., } 1 A n n i i ? ? ? CS 441 Discrete mathematics for CS M. Hauskrecht Generalized unions and intersections Definition: The intersection of a collection of sets is the set that contains those elements that are members of all sets in the collection. Example: • Let Ai = {1,2,...,i} i =1,2,...,n { ... } 1 2 1 n n i i A ? A ? A ? ? A ? ? } 1 { 1 ? ? ? n i i A 7 CS 441 Discrete mathematics for CS M. Hauskrecht Computer representation of sets • How to represent sets in the computer? • One solution: Data structures like a list • A better solution: • Assign a bit in a bit string to each element in the universal set and set the bit to 1 if the element is present otherwise use 0 Example: All possible elements: U={1 2 3 4 5} • Assume A={2,5} – Computer representation: A = 01001 • Assume B={1,5} – Computer representation: B = 10001 CS 441 Discrete mathematics for CS M. Hauskrecht Computer representation of sets Example: • A = 01001 • B = 10001 • The union is modeled with a bitwise or • A ? B = 11001 • The intersection is modeled with a bitwise and • A ? B = 00001 • The complement is modeled with a bitwise negation • A =10110 8 CS 441 Discrete mathematics for CS M. Hauskrecht Functions M. Hauskrecht Functions • Definition: Let A and B be two sets. A function from A to B, denoted f : A ? B , is an assignment of exactly one element of B to each element of A. We write f(a) = b to denote the assignment of b to an element a of A by the function f. A f: A ?B B 9 M. Hauskrecht Functions • Definition: Let A and B be two sets. A function from A to B, denoted f : A ? B , is an assignment of exactly one element of B to each element of A. We write f(a) = b to denote the assignment of b to an element a of A by the function f. A f: A ?B B Not allowed !!! M. Hauskrecht Representing functions Representations of functions: 1. Explicitly state the assignments in between elements of the two sets 2. Compactly by a formula. (using ‘standard’ functions) Example1: • Let A = {1,2,3} and B = {a,b,c} • Assume f is defined as: • 1 ? c • 2 ? a • 3 ? c • Is f a function ? • Yes. since f(1)=c, f(2)=a, f(3)=c. each element of A is assigned an element from B 10 M. Hauskrecht Representing functions Representations of functions: 1. Explicitly state the assignments in between elements of the two sets 2. Compactly by a formula. (using ‘standard’ functions) Example 2: • Let A = {1,2,3} and B = {a,b,c} • Assume g is defined as • 1 ? c • 1 ? b • 2 ? a • 3 ? c • Is g a function? • No. g(1) = is assigned both c and b. M. Hauskrecht Representing functions Representations of functions: 1. Explicitly state the assignments in between elements of the two sets 2. Compactly by a formula. (using ‘standard’ functions) Example 3: • A = {0,1,2,3,4,5,6,7,8,9}, B = {0,1,2} • Define h: A ? B as: • h(x) = x mod 3. • (the result is the remainder after the division by 3) • Assignments: • 0 ?0 3 ? 0 • 1?1 4 ? 1 • 2 ? 2 … 11 M. Hauskrecht Important sets Definitions: Let f be a function from A to B. • We say that A is the domain of f and B is the codomain of f. • If f(a) = b, b is the image of a and a is a pre-image of b. • The range of f is the set of all images of elements of A. Also, if f is a function from A to B, we say f maps A to B. Example: Let A = {1,2,3} and B = {a,b,c} • Assume f is defined as: 1 ? c, 2 ? a, 3 ? c • What is the image of 1? • 1 ? c c is the image of 1 • What is the pre-image of a? • 2 ? a 2 is a pre-image of a. • Domain of f ? {1,2,3} • Codomain of f ? {a,b,c} • Range of f ? {a,c} M. Hauskrecht Image of a subset Definition: Let f be a function from set A to set B and let S be a subset of A. The image of S is a subset of B that consists of the images of the elements of S. We denote the image of S by f(S), so that f(S) = { f(s) | s ? S }. Example: • Let A = {1,2,3} and B = {a,b,c} and f: 1 ? c, 2 ? a, 3 ? c • Let S = {1,3} then image f(S) = ? A f: A ? B B S f(S) 12 M. Hauskrecht Image of a subset Definition: Let f be a function from set A to set B and let S be a subset of A. The image of S is a subset of B that consists of the images of the elements of S. We denote the image of S by f(S), so that f(S) = { f(s) | s ? S }. Example: • Let A = {1,2,3} and B = {a,b,c} and f: 1 ? c, 2 ? a, 3 ? c • Let S = {1,3} then image f(S) = {c}. A f: A ? B B S f(S) M. Hauskrecht Injective function Definition: A function f is said to be one-to-one, or injective, if and only if f(x) = f(y) implies x = y for all x, y in the domain of f. A function is said to be an injection if it is one-to-one. Alternate: A function is one-to-one if and only if f(x) ? f(y), whenever x ? y. This is the contrapositive of the definition. A f: A ? B B A f: A ? B B Not injective Injective function 13 M. Hauskrecht Injective functions Example 1: Let A = {1,2,3} and B = {a,b,c} • Define f as – 1 ? c – 2 ? a – 3 ? c • Is f one to one? No, it is not one-to-one since f(1) = f(3) = c, and 1 ? 3. Example 2: Let g : Z ? Z, where g(x) = 2x - 1. • Is g is one-to-one (why?) • Yes. • Suppose g(a) = g(b), i.e., 2a - 1 = 2b - 1 => 2a = 2b `` => a = b. M. Hauskrecht Surjective function Definition: A function f from A to B is called onto, or surjective, if and only if for every b ? B there is an element a ? A such that f(a) = b. Alternative: all co-domain elements are covered A f: A ?B B 14 M. Hauskrecht Surjective functions Example 1: Let A = {1,2,3} and B = {a,b,c} – Define f as • 1 ? c • 2 ? a • 3 ? c • Is f an onto? • No. f is not onto, since b ? B has no pre-image. Example 2: A = {0,1,2,3,4,5,6,7,8,9}, B = {0,1,2} – Define h: A ? B as h(x) = x mod 3. • Is h an onto function? • Yes. h is onto since a pre-image of 0 is 6, a pre-image of 1 is 4, a pre-image of 2 is 8. M. Hauskrecht Bijective functions Definition: A function f is called a bijection if it is both one-toone and onto. A f: A ?B B 15 M. Hauskrecht Bijective functions Example 1: • Let A = {1,2,3} and B = {a,b,c} – Define f as • 1 ? c • 2 ? a • 3 ? b • Is f is a bijection? Yes. It is both one-to-one and onto. • Note: Let f be a function from a set A to itself, where A is finite. f is one-to-one if and only if f is onto. • This is not true for A an infinite set. Define f : Z ? Z, where f(z) = 2 * z. f is one-to-one but not onto (3 has no pre-image). M. Hauskrecht Bijective functions Example 2: • Define g : W ? W (whole numbers), where g(n) = [n/2] (floor function). • 0 ? [0/2] = [0] = 0 • 1 ? [1/2] = [1/2] = 0 • 2 ? [2/2] = [1] = 1 • 3 ? [3/2] = [3/2] = 1 • ... • Is g a bijection? – No. g is onto but not 1-1 (g(0) = g(1) = 0 however 0 ? 1. Set identities Set Identities (analogous to logical equivalences) • Identity – A ? = A – A U = A • Domination – A U = U – A ? = ? • Idempotent – A A = A – A A = A ? ? ? ? ? ? CS 441 Discrete mathematics for CS M. Hauskrecht Set identities • Double complement – A = A • Commutative – A B = B A – A B = B A • Associative – A (B C) = (A B) C – A (B C) = (A B) C • Distributive – A (B C) = (A B) (A C) – A (B C) = (A B) (A C) ? ? ? ? ? ? ? ? ? ? ? ? ? ? ? ? ? ? ? ? ? ? 5 CS 441 Discrete mathematics for CS M. Hauskrecht Set identities • DeMorgan – (A B) = A B – (A B) = A B • Absorbtion Laws – A (A B) = A – A (A B) = A • Complement Laws – A A = U – A A = ? ? ? ? ? ? ? ? ? ? ? CS 441 Discrete mathematics for CS M. Hauskrecht Set identities • Set identities can be proved using membership tables. • List each combination of sets that an element can belong to. Then show that for each such a combination the element either belongs or does not belong to both sets in the identity. • Prove: (A ? B) = A B A B _ A _ B ____ A B _ _ A B 1 1 0 0 0 0 1 0 0 1 0 0 0 1 1 0 0 0 0 0 1 1 1 1 ? ? ? 6 CS 441 Discrete mathematics for CS M. Hauskrecht Generalized unions and itersections Definition: The union of a collection of sets is the set that contains those elements that are members of at least one set in the collection. Example: • Let Ai= {1,2,...,i} i =1,2,...,n • { ... } 1 2 1 n n i i A ? A ? A ? ? A ? ? {1 , 2 ,..., } 1 A n n i i ? ? ? CS 441 Discrete mathematics for CS M. Hauskrecht Generalized unions and intersections Definition: The intersection of a collection of sets is the set that contains those elements that are members of all sets in the collection. Example: • Let Ai = {1,2,...,i} i =1,2,...,n { ... } 1 2 1 n n i i A ? A ? A ? ? A ? ? } 1 { 1 ? ? ? n i i A 7 CS 441 Discrete mathematics for CS M. Hauskrecht Computer representation of sets • How to represent sets in the computer? • One solution: Data structures like a list • A better solution: • Assign a bit in a bit string to each element in the universal set and set the bit to 1 if the element is present otherwise use 0 Example: All possible elements: U={1 2 3 4 5} • Assume A={2,5} – Computer representation: A = 01001 • Assume B={1,5} – Computer representation: B = 10001 CS 441 Discrete mathematics for CS M. Hauskrecht Computer representation of sets Example: • A = 01001 • B = 10001 • The union is modeled with a bitwise or • A ? B = 11001 • The intersection is modeled with a bitwise and • A ? B = 00001 • The complement is modeled with a bitwise negation • A =10110 8 CS 441 Discrete mathematics for CS M. Hauskrecht Functions M. Hauskrecht Functions • Definition: Let A and B be two sets. A function from A to B, denoted f : A ? B , is an assignment of exactly one element of B to each element of A. We write f(a) = b to denote the assignment of b to an element a of A by the function f. A f: A ?B B 9 M. Hauskrecht Functions • Definition: Let A and B be two sets. A function from A to B, denoted f : A ? B , is an assignment of exactly one element of B to each element of A. We write f(a) = b to denote the assignment of b to an element a of A by the function f. A f: A ?B B Not allowed !!! M. Hauskrecht Representing functions Representations of functions: 1. Explicitly state the assignments in between elements of the two sets 2. Compactly by a formula. (using ‘standard’ functions) Example1: • Let A = {1,2,3} and B = {a,b,c} • Assume f is defined as: • 1 ? c • 2 ? a • 3 ? c • Is f a function ? • Yes. since f(1)=c, f(2)=a, f(3)=c. each element of A is assigned an element from B 10 M. Hauskrecht Representing functions Representations of functions: 1. Explicitly state the assignments in between elements of the two sets 2. Compactly by a formula. (using ‘standard’ functions) Example 2: • Let A = {1,2,3} and B = {a,b,c} • Assume g is defined as • 1 ? c • 1 ? b • 2 ? a • 3 ? c • Is g a function? • No. g(1) = is assigned both c and b. M. Hauskrecht Representing functions Representations of functions: 1. Explicitly state the assignments in between elements of the two sets 2. Compactly by a formula. (using ‘standard’ functions) Example 3: • A = {0,1,2,3,4,5,6,7,8,9}, B = {0,1,2} • Define h: A ? B as: • h(x) = x mod 3. • (the result is the remainder after the division by 3) • Assignments: • 0 ?0 3 ? 0 • 1?1 4 ? 1 • 2 ? 2 … 11 M. Hauskrecht Important sets Definitions: Let f be a function from A to B. • We say that A is the domain of f and B is the codomain of f. • If f(a) = b, b is the image of a and a is a pre-image of b. • The range of f is the set of all images of elements of A. Also, if f is a function from A to B, we say f maps A to B. Example: Let A = {1,2,3} and B = {a,b,c} • Assume f is defined as: 1 ? c, 2 ? a, 3 ? c • What is the image of 1? • 1 ? c c is the image of 1 • What is the pre-image of a? • 2 ? a 2 is a pre-image of a. • Domain of f ? {1,2,3} • Codomain of f ? {a,b,c} • Range of f ? {a,c} M. Hauskrecht Image of a subset Definition: Let f be a function from set A to set B and let S be a subset of A. The image of S is a subset of B that consists of the images of the elements of S. We denote the image of S by f(S), so that f(S) = { f(s) | s ? S }. Example: • Let A = {1,2,3} and B = {a,b,c} and f: 1 ? c, 2 ? a, 3 ? c • Let S = {1,3} then image f(S) = ? A f: A ? B B S f(S) 12 M. Hauskrecht Image of a subset Definition: Let f be a function from set A to set B and let S be a subset of A. The image of S is a subset of B that consists of the images of the elements of S. We denote the image of S by f(S), so that f(S) = { f(s) | s ? S }. Example: • Let A = {1,2,3} and B = {a,b,c} and f: 1 ? c, 2 ? a, 3 ? c • Let S = {1,3} then image f(S) = {c}. A f: A ? B B S f(S) M. Hauskrecht Injective function Definition: A function f is said to be one-to-one, or injective, if and only if f(x) = f(y) implies x = y for all x, y in the domain of f. A function is said to be an injection if it is one-to-one. Alternate: A function is one-to-one if and only if f(x) ? f(y), whenever x ? y. This is the contrapositive of the definition. A f: A ? B B A f: A ? B B Not injective Injective function 13 M. Hauskrecht Injective functions Example 1: Let A = {1,2,3} and B = {a,b,c} • Define f as – 1 ? c – 2 ? a – 3 ? c • Is f one to one? No, it is not one-to-one since f(1) = f(3) = c, and 1 ? 3. Example 2: Let g : Z ? Z, where g(x) = 2x - 1. • Is g is one-to-one (why?) • Yes. • Suppose g(a) = g(b), i.e., 2a - 1 = 2b - 1 => 2a = 2b `` => a = b. M. Hauskrecht Surjective function Definition: A function f from A to B is called onto, or surjective, if and only if for every b ? B there is an element a ? A such that f(a) = b. Alternative: all co-domain elements are covered A f: A ?B B 14 M. Hauskrecht Surjective functions Example 1: Let A = {1,2,3} and B = {a,b,c} – Define f as • 1 ? c • 2 ? a • 3 ? c • Is f an onto? • No. f is not onto, since b ? B has no pre-image. Example 2: A = {0,1,2,3,4,5,6,7,8,9}, B = {0,1,2} – Define h: A ? B as h(x) = x mod 3. • Is h an onto function? • Yes. h is onto since a pre-image of 0 is 6, a pre-image of 1 is 4, a pre-image of 2 is 8. M. Hauskrecht Bijective functions Definition: A function f is called a bijection if it is both one-toone and onto. A f: A ?B B 15 M. Hauskrecht Bijective functions Example 1: • Let A = {1,2,3} and B = {a,b,c} – Define f as • 1 ? c • 2 ? a • 3 ? b • Is f is a bijection? Yes. It is both one-to-one and onto. • Note: Let f be a function from a set A to itself, where A is finite. f is one-to-one if and only if f is onto. • This is not true for A an infinite set. Define f : Z ? Z, where f(z) = 2 * z. f is one-to-one but not onto (3 has no pre-image). M. Hauskrecht Bijective functions Example 2: • Define g : W ? W (whole numbers), where g(n) = [n/2] (floor function). • 0 ? [0/2] = [0] = 0 • 1 ? [1/2] = [1/2] = 0 • 2 ? [2/2] = [1] = 1 • 3 ? [3/2] = [3/2] = 1 • ... • Is g a bijection? – No. g is onto but not 1-1 (g(0) = g(1) = 0 however 0 ? 1. Set identities Set Identities (analogous to logical equivalences) • Identity – A ? = A – A U = A • Domination – A U = U – A ? = ? • Idempotent – A A = A – A A = A ? ? ? ? ? ? CS 441 Discrete mathematics for CS M. Hauskrecht Set identities • Double complement – A = A • Commutative – A B = B A – A B = B A • Associative – A (B C) = (A B) C – A (B C) = (A B) C • Distributive – A (B C) = (A B) (A C) – A (B C) = (A B) (A C) ? ? ? ? ? ? ? ? ? ? ? ? ? ? ? ? ? ? ? ? ? ? 5 CS 441 Discrete mathematics for CS M. Hauskrecht Set identities • DeMorgan – (A B) = A B – (A B) = A B • Absorbtion Laws – A (A B) = A – A (A B) = A • Complement Laws – A A = U – A A = ? ? ? ? ? ? ? ? ? ? ? CS 441 Discrete mathematics for CS M. Hauskrecht Set identities • Set identities can be proved using membership tables. • List each combination of sets that an element can belong to. Then show that for each such a combination the element either belongs or does not belong to both sets in the identity. • Prove: (A ? B) = A B A B _ A _ B ____ A B _ _ A B 1 1 0 0 0 0 1 0 0 1 0 0 0 1 1 0 0 0 0 0 1 1 1 1 ? ? ? 6 CS 441 Discrete mathematics for CS M. Hauskrecht Generalized unions and itersections Definition: The union of a collection of sets is the set that contains those elements that are members of at least one set in the collection. Example: • Let Ai= {1,2,...,i} i =1,2,...,n • { ... } 1 2 1 n n i i A ? A ? A ? ? A ? ? {1 , 2 ,..., } 1 A n n i i ? ? ? CS 441 Discrete mathematics for CS M. Hauskrecht Generalized unions and intersections Definition: The intersection of a collection of sets is the set that contains those elements that are members of all sets in the collection. Example: • Let Ai = {1,2,...,i} i =1,2,...,n { ... } 1 2 1 n n i i A ? A ? A ? ? A ? ? } 1 { 1 ? ? ? n i i A 7 CS 441 Discrete mathematics for CS M. Hauskrecht Computer representation of sets • How to represent sets in the computer? • One solution: Data structures like a list • A better solution: • Assign a bit in a bit string to each element in the universal set and set the bit to 1 if the element is present otherwise use 0 Example: All possible elements: U={1 2 3 4 5} • Assume A={2,5} – Computer representation: A = 01001 • Assume B={1,5} – Computer representation: B = 10001 CS 441 Discrete mathematics for CS M. Hauskrecht Computer representation of sets Example: • A = 01001 • B = 10001 • The union is modeled with a bitwise or • A ? B = 11001 • The intersection is modeled with a bitwise and • A ? B = 00001 • The complement is modeled with a bitwise negation • A =10110 8 CS 441 Discrete mathematics for CS M. Hauskrecht Functions M. Hauskrecht Functions • Definition: Let A and B be two sets. A function from A to B, denoted f : A ? B , is an assignment of exactly one element of B to each element of A. We write f(a) = b to denote the assignment of b to an element a of A by the function f. A f: A ?B B 9 M. Hauskrecht Functions • Definition: Let A and B be two sets. A function from A to B, denoted f : A ? B , is an assignment of exactly one element of B to each element of A. We write f(a) = b to denote the assignment of b to an element a of A by the function f. A f: A ?B B Not allowed !!! M. Hauskrecht Representing functions Representations of functions: 1. Explicitly state the assignments in between elements of the two sets 2. Compactly by a formula. (using ‘standard’ functions) Example1: • Let A = {1,2,3} and B = {a,b,c} • Assume f is defined as: • 1 ? c • 2 ? a • 3 ? c • Is f a function ? • Yes. since f(1)=c, f(2)=a, f(3)=c. each element of A is assigned an element from B 10 M. Hauskrecht Representing functions Representations of functions: 1. Explicitly state the assignments in between elements of the two sets 2. Compactly by a formula. (using ‘standard’ functions) Example 2: • Let A = {1,2,3} and B = {a,b,c} • Assume g is defined as • 1 ? c • 1 ? b • 2 ? a • 3 ? c • Is g a function? • No. g(1) = is assigned both c and b. M. Hauskrecht Representing functions Representations of functions: 1. Explicitly state the assignments in between elements of the two sets 2. Compactly by a formula. (using ‘standard’ functions) Example 3: • A = {0,1,2,3,4,5,6,7,8,9}, B = {0,1,2} • Define h: A ? B as: • h(x) = x mod 3. • (the result is the remainder after the division by 3) • Assignments: • 0 ?0 3 ? 0 • 1?1 4 ? 1 • 2 ? 2 … 11 M. Hauskrecht Important sets Definitions: Let f be a function from A to B. • We say that A is the domain of f and B is the codomain of f. • If f(a) = b, b is the image of a and a is a pre-image of b. • The range of f is the set of all images of elements of A. Also, if f is a function from A to B, we say f maps A to B. Example: Let A = {1,2,3} and B = {a,b,c} • Assume f is defined as: 1 ? c, 2 ? a, 3 ? c • What is the image of 1? • 1 ? c c is the image of 1 • What is the pre-image of a? • 2 ? a 2 is a pre-image of a. • Domain of f ? {1,2,3} • Codomain of f ? {a,b,c} • Range of f ? {a,c} M. Hauskrecht Image of a subset Definition: Let f be a function from set A to set B and let S be a subset of A. The image of S is a subset of B that consists of the images of the elements of S. We denote the image of S by f(S), so that f(S) = { f(s) | s ? S }. Example: • Let A = {1,2,3} and B = {a,b,c} and f: 1 ? c, 2 ? a, 3 ? c • Let S = {1,3} then image f(S) = ? A f: A ? B B S f(S) 12 M. Hauskrecht Image of a subset Definition: Let f be a function from set A to set B and let S be a subset of A. The image of S is a subset of B that consists of the images of the elements of S. We denote the image of S by f(S), so that f(S) = { f(s) | s ? S }. Example: • Let A = {1,2,3} and B = {a,b,c} and f: 1 ? c, 2 ? a, 3 ? c • Let S = {1,3} then image f(S) = {c}. A f: A ? B B S f(S) M. Hauskrecht Injective function Definition: A function f is said to be one-to-one, or injective, if and only if f(x) = f(y) implies x = y for all x, y in the domain of f. A function is said to be an injection if it is one-to-one. Alternate: A function is one-to-one if and only if f(x) ? f(y), whenever x ? y. This is the contrapositive of the definition. A f: A ? B B A f: A ? B B Not injective Injective function 13 M. Hauskrecht Injective functions Example 1: Let A = {1,2,3} and B = {a,b,c} • Define f as – 1 ? c – 2 ? a – 3 ? c • Is f one to one? No, it is not one-to-one since f(1) = f(3) = c, and 1 ? 3. Example 2: Let g : Z ? Z, where g(x) = 2x - 1. • Is g is one-to-one (why?) • Yes. • Suppose g(a) = g(b), i.e., 2a - 1 = 2b - 1 => 2a = 2b `` => a = b. M. Hauskrecht Surjective function Definition: A function f from A to B is called onto, or surjective, if and only if for every b ? B there is an element a ? A such that f(a) = b. Alternative: all co-domain elements are covered A f: A ?B B 14 M. Hauskrecht Surjective functions Example 1: Let A = {1,2,3} and B = {a,b,c} – Define f as • 1 ? c • 2 ? a • 3 ? c • Is f an onto? • No. f is not onto, since b ? B has no pre-image. Example 2: A = {0,1,2,3,4,5,6,7,8,9}, B = {0,1,2} – Define h: A ? B as h(x) = x mod 3. • Is h an onto function? • Yes. h is onto since a pre-image of 0 is 6, a pre-image of 1 is 4, a pre-image of 2 is 8. M. Hauskrecht Bijective functions Definition: A function f is called a bijection if it is both one-toone and onto. A f: A ?B B 15 M. Hauskrecht Bijective functions Example 1: • Let A = {1,2,3} and B = {a,b,c} – Define f as • 1 ? c • 2 ? a • 3 ? b • Is f is a bijection? Yes. It is both one-to-one and onto. • Note: Let f be a function from a set A to itself, where A is finite. f is one-to-one if and only if f is onto. • This is not true for A an infinite set. Define f : Z ? Z, where f(z) = 2 * z. f is one-to-one but not onto (3 has no pre-image). M. Hauskrecht Bijective functions Example 2: • Define g : W ? W (whole numbers), where g(n) = [n/2] (floor function). • 0 ? [0/2] = [0] = 0 • 1 ? [1/2] = [1/2] = 0 • 2 ? [2/2] = [1] = 1 • 3 ? [3/2] = [3/2] = 1 • ... • Is g a bijection? – No. g is onto but not 1-1 (g(0) = g(1) = 0 however 0 ? 1.
المادة المعروضة اعلاه هي مدخل الى المحاضرة المرفوعة بواسطة استاذ(ة) المادة . وقد تبدو لك غير متكاملة . حيث يضع استاذ المادة في بعض الاحيان فقط الجزء الاول من المحاضرة من اجل الاطلاع على ما ستقوم بتحميله لاحقا . في نظام التعليم الالكتروني نوفر هذه الخدمة لكي نبقيك على اطلاع حول محتوى الملف الذي ستقوم بتحميله .
|