Revision as of 12:56, 16 November 2010 by Nelder (Talk | contribs)

(diff) ← Older revision | Latest revision (diff) | Newer revision → (diff)

1.2 Probability Space

1.2.1 Probability Space

• Probability Space = $ \left\{ \mathcal{S},\mathcal{F}\left(\mathcal{S}\right),\mathcal{P}\right\} $

$ \mathcal{S}\sim $ sample space

$ \mathcal{F}\left(\mathcal{S}\right)\sim $ event space , collection of subsets of $ \mathcal{S} $ (including sample space itself)

$ \mathcal{P}\sim $ maps $ \mathcal{F}\left(\mathcal{S}\right)\rightarrow\left[0,1\right] $

1.2.2 Event space

• Event space $ F\left(S\right) $ or $ F $ is a non-empty collection of subset of $ S $ satisfying the following three closure properties:

1. If $ A\in F\left(S\right) $ , then $ \bar{A}\in F\left(S\right) $ .

2. If for some finite $ n $ , $ A_{1},A_{2},\cdots,A_{n}\in F\left(S\right) $ , then $ \bigcup_{i=1}^{n}A_{i}\in F\left(S\right) $ .

3. If $ A_{i}\in F\left(S\right) $ , $ i=1,2,\cdots $ , then $ \bigcup_{i=1}^{\infty}A_{i}\in F\left(S\right) $ .

• A set $ F\left(S\right) $ with these 3 properties is called a sigma-field ($ \sigma $-field). If only 1 and 2 are satisfied, we have a field.

• It follows from three properties that $ \varnothing,S\in F\left(S\right) $ .

– Suppose $ A\in F\left(S\right) $ , then $ \bar{A}\in F\left(S\right) $ , $ A\cup\bar{A}=S\in F\left(S\right) $ , and $ \bar{S}=\varnothing\in F\left(S\right) $ .

• What about intersection? Suppose $ A,B\in F\left(S\right) $ . Is $ A\cap B\in F\left(S\right) $ ?

$ A\cap B=\overline{\overline{A\cap B}}=\overline{\overline{A}\cup\overline{B}}\in F\left(S\right) $ .

1.2.3 Axioms of probability

• The probability measure P\left(\cdot\right) corresponding to S and F\left(S\right) is the assignment of a real number P\left(A\right) to each A\in F\left(S\right) satisfying following properties. Axioms of probability:

1. P\left(A\right)\geq0 , \forall A\in F\left(S\right) .

2. P\left(S\right)=1 .

3. If A_{1} and A_{2} are disjoint events, then P\left(A_{1}\cup A_{2}\right)=P\left(A_{1}\right)+P\left(A_{2}\right) . If A_{1},A_{2}\in F\left(S\right) and A_{1}\cap A_{2}=\varnothing , then A_{1} and A_{2} are disjoint events.

4. If A_{1},A_{2},\cdots,A_{n},\cdots\in F\left(S\right) is a countable collection of disjointed events, then P\left(\bigcup_{i=1}^{\infty}A_{i}\right)=\sum_{i=1}^{\infty}P\left(A_{i}\right) .

• P\left(\cdot\right) is a set function. P\left(\cdot\right):F\left(S\right)\rightarrow\mathbf{R} .

• If you want to talk about the probability of a single output \omega_{0}\in S , you do so by considering the single event

Alumni Liaison

Abstract algebra continues the conceptual developments of linear algebra, on an even grander scale.

Dr. Paul Garrett