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Probability Space and Random Variables Measurable Space – σ-Algebra Definition. (σ -Algebra) A collection F of subsets of a set Ω is said to be a σ -algebra in Ω if F has the following properties (i) Ω ∈ F (ii) A ∈ F ⇒ Ac ≡ Ω − A ∈ F ∞ S (iii) A1 , A2 , . . . , An , . . . ∈ F ⇒ An ∈ F n=1 (i), (ii): ∅ = Ωc ∈ F An ∈ Ω ⇒ ∞ T n=1 An = (ii) ∞ S Acn n=1 ∈F ⇒ Acn ∈ F (iii) ∞ S n=1 Acn ∈ F ⇒(ii) Probability Space and Random Variables – p.1/1 Measurable Space – σ-Algebra If F is σ -algebra in Ω, then (Ω, F ) (or just Ω) is called a measurable space, and A, B ∈ F are called measurable sets in Ω Probability Space and Random Variables – p.2/1 Measurable Space – σ-Algebra Examples for σ -algebras in Ω = {1, 2, 3, 4, 5, 6} F1 = Ω, ∅} F2 = Ω, ∅, {1, 2} , {3, 4, 5, 6} F 3 = Ω, ∅, {1} , {2} , {1, 2} , {3, 4, 5, 6} , {1, 3, 4, 5, 6} , {2, 3, 4, 5, 6} Examples for σ -algebras in Ω = R ≡ (−∞, ∞) F1 = Ω, ∅} F2 = Ω, ∅, (−∞, 0), [0, ∞) F2 = Ω, ∅, {0}, (−∞, 0), (0, ∞), (−∞, 0], [0, ∞) Probability Space and Random Variables – p.3/1 Measurable Space – σ(A) Theorem If A is any collection of subsets of Ω, there exists a smallest σ -algebra F ∗ in Ω such that A ⊂ F ∗ . Definition F ∗ is called σ -algebra generated by A and is denoted by σ(A). Examples: Ω = {1, 2, 3, 4, 5, 6}, A = {1, 2} σ(A) = Ω, ∅, {1, 2} , {3, 4, 5, 6} Ω = {1, 2, 3, 4, 5, 6}, A = {1} , {1, 2} σ(A) = Ω, ∅, {1} , {2} , {1, 2} , {3, 4, 5, 6} , {1, 3, 4, 5, 6} , {2, 3, 4, 5, 6} Probability Space and Random Variables – p.4/1 Measurable Space – σ(A) Examples cont.: Ω = (−10, 10], A = {1} , (0, 10] σ(A) = Ω, ∅, {1} , (0, 10], (0, 1) ∪ (1, 10], (−10, 0], (−10,1) ∪ (1, 10], (−10, 0] ∪ {1} , (0, 1) ∪ (1, 10] Probability Space and Random Variables – p.5/1 Measurable Space – σ(A) Procedure. Construct the σ -algebra F ∗ = {Fj } generated from A = {Ai } 1: F ∗ ← Ω, ∅, Ai 2: repeat 3: F ∗ ← Fjc ∈ / F ∗ (insert the missing current sets’ 4: 5: 6: 7: complements) if there are no new sets inserted into F ∗ then return F ∗ F ∗ ← Fj ∪ Fk ∈ / F ∗ , j 6= k (insert the missing unions of current sets) until no change in iteration return F ∗ Probability Space and Random Variables – p.6/1 Measurable Space – Borel σ-algebra Let S be a topological space, the Borel σ -algebra on S , denoted by B(S), is the σ -algebra generated by the family of open subsets of S , i.e., B(S) ≡ σ(open sets) The member of B are called Borel sets of S . Probability Space and Random Variables – p.7/1 Measurable Space – Measure Function Let (Ω, F ) be a measurable space. Definition. (Positive measure) A ( (positive) measure) is a function µ µ : F → [0, ∞] which is countably additive, i.e., if {Ai } is a disjoint countable collection of members of F , then µ ∞ [ i=1 Ai = ∞ X µ(Ai ) i=1 A measure space is the triplet (Ω, F , µ) Probability Space and Random Variables – p.8/1 Measurable Space – Measure Function Lemma. Let (Ω, F , µ) be a measure space then µ(A ∪ B) ≤ µ(A) + µ(B), A, B ∈ F S P ∞ ∞ µ Ai ≤ µ(Ai ), Ai ∈ F i=1 i=1 If µ(Ω) < ∞, then µ(A ∪ B) = µ(A) + µ(B) − µ(A ∩ B) Probability Space and Random Variables – p.9/1 Measurable Space – Lebesgue Measure on R n Definition. (Lebesgue Measure) Let (Ω, F ) = (Rn , B(Rn )). Let n o A = x = [x1 , . . . , xn ]T ∈ Rn : αi ≤ xi < βi , i = 1, . . . , n then the Lebesgue measure of A denoted by m(A) is defined as ∞ Y m(A) = vol(A) ≡ (βi − αi ) i=1 if Ω = R what is the Lebesgue measure of A = [α, β)? Answer: its length m(A) = β − α Probability Space and Random Variables – p.10/1 Probability Space – Probability Function Definition. (Probability Measure) Let Ω denotes the sample space and F a collection of events assumed to be a σ -algebra of events. Then, a probability measure (function) is measure such that P (Ω) = 1, i.e., P : F → [0, 1] which leads to the probability axioms: (i) P (A) ≥ 0 ∀A ∈ F (ii) P (Ω) = 1 (iii) Ai ∈ F , Ai ∩ Aj = ∅ ∀i 6= j; i, j = 1, 2, . . . ∞ ∞ P S P Ai = P (Ai ) i=1 i=1 Probability Space and Random Variables – p.11/1 Probability Space – Definition Definition. (Probability Space) A probability space is the triplet (Ω, F , P ) where Ω is the sample space, F is a σ -algebra of events, and P (·) is a probability measure (function) with domain Ω and range [0, 1]. Probability Space and Random Variables – p.12/1 Random Variable – Definition Definition. (Random variable) Let (Ω, F , P ) be a probability space. A random variable , denoted by X or X(·) is a function X :Ω→R and must satisfies Ax = {ω : X(w) ≤ x} ∈ F Probability Space and Random Variables – p.13/1 Random Variable – Examples Consider the experiment of tossing a dice: Ω = {ω : ω = 1, 2, . . . , 6} X1 (ω) = ω ( X2 (ω) = 0 1 ω ∈ {1, 3, 5} ω ∈ {2, 4, 6} Consider the experiment of tossing a dice twice: Ω = {ω = (i, j) : i, j = 1, 2, . . . , 6} X1 (ω) = i + j X2 (ω) = |i − j| Probability Space and Random Variables – p.14/1 Random Variable – Definitions Definition. (Cumulative distribution function) The (cumulative) distribution function (cdf) of a random variable X , denoted by FX (· · · ) , is defined to be FX : R → [0, 1] which satisfies FX (x) = P (X ≤ x) = P {ω : X(w) ≤ x} Probability Space and Random Variables – p.15/1 Random Variable – cdf Examples. (Cumulative distribution function) Consider the experiment of tossing a dice once x<1 0 FX (x) = ⌊x⌋ 1≤x≤6 6 1 x>6 which satisfies FX (x) = P (X ≤ x) = P {ω : X(w) ≤ x} Probability Space and Random Variables – p.16/1 Random Variable – cdf Examples. (Cumulative distribution function) Probability Space and Random Variables – p.17/1