1 / 9

The Law of I terated E xpectation

The Law of I terated E xpectation. Nancy Zhang. Easy. Example 1 bivariate random variables. Let X=schooling of the person Y=monthly income of the person Solve the expectation of Y from the following table. x=1 have an university degree or above x=2 don’t have an university degree.

vachel
Télécharger la présentation

The Law of I terated E xpectation

An Image/Link below is provided (as is) to download presentation Download Policy: Content on the Website is provided to you AS IS for your information and personal use and may not be sold / licensed / shared on other websites without getting consent from its author. Content is provided to you AS IS for your information and personal use only. Download presentation by click this link. While downloading, if for some reason you are not able to download a presentation, the publisher may have deleted the file from their server. During download, if you can't get a presentation, the file might be deleted by the publisher.

E N D

Presentation Transcript


  1. The Law of Iterated Expectation Nancy Zhang

  2. Easy Example 1bivariate random variables Let X=schooling of the person Y=monthly income of the person Solve the expectation of Y from the following table x=1 have an university degree or above x=2 don’t have an university degree

  3. Example 1 (continued) Solution: E(X)=E(Y|X=1)*P(X=1) +E(Y|X=2)*P(X=2) • X=x1,x2…,xn • E (Y)=E(Y|X=x1)*P(X=x1)+E(Y|X=x2)*P(X=x2) +…+E(Y|X=xn)*P(Y|X=xn) =∑x E(Y|X=xi)*P (X=xi)

  4. Example 1 (continued) Think E(Y|X=xi) as one random variable E(Y|X=xi) =Ai: E(Y)=∑x Ai*P(X=xi)=E(Ai)=E[E(Y|X=xi)]=E[μY|X] *This process is called average out X. Recall the formula: E(Y)= ∑x E(Y|X=xi)*P (X=xi) = E[E(Y|X=xi)] = E[μY|X]

  5. Intermediate E(Y)= ∑x E(Y|X=xi)*P (X=xi) = E[E(Y|X=xi)] = E[μY|X] Example 2 trivariate random variables Let X=schooling of the person Y=monthly income of the person Z=gender (Z=1 men; Z=2 women) a. Check if there is salary discrimination on women b. Solve the expectation of Y from the following table

  6. E(Y)= ∑x E(Y|X=xi)*P (X=xi) = E[E(Y|X=xi)] = E[μY|X] Example 2 (continued) Solution: Step 1:average out X a. When Z=1, Use the formula above, average out X: let: E(Y|X=xi,Z=1)=a1 E(A|Z=1)= ∑x E(Y|X=xi,Z=1)*P(X=xi) = E[E(Y|X=xi,Z=1)|Z=1] = 1200*0.5+400*0.5=800

  7. E(Y)= ∑x E(Y|X=xi)*P (X=xi) = E[E(Y|X=xi)] = E[μY|X] Example 2 (continued) Similarly, when Z=2, average out X: E(A|Z=2) = ∑x E(Y|X=xi,Z=2)*P(X=xi) = 800*0.5+500*0.5=650 As 650<800, the conditional expectations suggest that there is salary discrimination on women.* *Note: self-created data, not based on real survey.

  8. E(Y)= ∑x E(Y|X=xi)*P (X=xi) = E[E(Y|X=xi)] = E[μY|X] Example 2 (continued) Step 2: average out Z: Again use the formula for bivariate random numbers: E(Y)= ∑z E(A|Z=zi)*P(Z=zi) = E[E(A|Z=zi)] = E{E[E(Y|X, Z)|Z]} = 0.5*800+650*0.5=725

  9. Hard The law of iterated expectation • For a bivariate random variables, X and Y: • E(Y) = E[E(Y|X)] • For a trivariate random variables, X, Y and Z • E(Y|X,Z) = conditional mean given X and Z. • E(Y|Z) = E[E(Y|X,Z)|Z] • E(Y|X) = E[E(Y|X,Z)|X] • E(Y) = E{E[E(Y|X,Z)|Z]} • (note: taking expectations in several iterations.)

More Related