1 / 30

Let X represent a Binomial r.v ,Then from

Binomial Random Variable Approximations, Conditional Probability Density Functions and Stirling’s Formula. Let X represent a Binomial r.v ,Then from for large n . In this context, two approximations are extremely useful. The Normal Approximation (Demoivre-Laplace Theorem).

matildee
Download Presentation

Let X represent a Binomial r.v ,Then from

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. Binomial Random Variable Approximations,Conditional Probability Density Functionsand Stirling’s Formula

  2. Let X represent a Binomial r.v ,Then from • for large n. In this context, two approximations are extremely useful.

  3. The Normal Approximation (Demoivre-Laplace Theorem) • Suppose with p held fixed. Then for k in the neighborhood of np, we can approximate • And we have: • where

  4. As we know, • If and are within with approximation: • where • We can express this formula in terms of the normalized integral • that has been tabulated extensively.

  5. Example • A fair coin is tossed 5,000 times. • Find the probability that the number of heads is between 2,475 to 2,525. • We need • Since n is large we can use the normal approximation. • so that and • and • So the approximation is valid for and Solution

  6. Example - continued • Here, • Using the table,

  7. The Poisson Approximation • For large n, the Gaussian approximation of a binomial r.v is valid only if p is fixed, i.e., only if and • What if is small, or if it does not increase with n? • for example, as such that is a fixed number.

  8. The Poisson Approximation • Consider random arrivals such as telephone calls over a line. • n: total number of calls in the interval • as we have • Suppose • Δ: a small interval of duration

  9. The Poisson Approximation • p: probability of a single call (during 0 to T) occurring in Δ: • as • Normal approximation is invalid here. • Suppose the interval Δ in the figure: • (H) “success” : A call inside Δ, • (T ) “failure” : A call outside Δ • : probability of obtaining k calls (in any order) in an interval of duration Δ ,

  10. The Poisson Approximation • Thus, the Poisson p.m.f

  11. Example: Winning a Lottery • Suppose • two million lottery tickets are issued • with 100 winning tickets among them. • a) If a person purchases 100 tickets, what is the probability of winning? Solution The probability of buying a winning ticket

  12. Winning a Lottery - continued • X: number of winning tickets • n: number of purchased tickets , • P: an approximate Poisson distribution with parameter • So, The Probability of winning is:

  13. Winning a Lottery - continued • b) How many tickets should one buy to be 95% confident of having a winning ticket? • we need • But or • Thus one needs to buy about 60,000 tickets to be 95% confident of having a winning ticket! Solution

  14. Example: Danger in Space Mission • A space craft has 100,000 components • The probability of any one component being defective is • The mission will be in danger if five or more components become defective. • Find the probability of such an event. • n is large and p is small • Poisson Approximation with parameter Solution

  15. Conditional Probability Density Function

  16. Conditional Probability Density Function • Further, • Since for

  17. 1 1 1 1 (b) (a) Example • Toss a coin and X(T)=0, X(H)=1. • Suppose • Determine • has the following form. • We need for all x. • For so that • and Solution

  18. 1 1 Example - continued • For so that • For and

  19. Example • Given suppose Find • We will first determine • For so that • For so that Solution

  20. (b) (a) Example - continued • Thus • and hence

  21. Example • Let B represent the event with • For a given determine and Solution

  22. Example - continued • For we have and hence • For we have and hence • For we have so that • Thus,

  23. Conditional p.d.f & Bayes’ Theorem • First, we extend the conditional probability results to random variables: • We know that If is a partition of S and B is an arbitrary event, then: • By setting we obtain:

  24. Conditional p.d.f & Bayes’ Theorem • Using: • We obtain: • For ,

  25. Conditional p.d.f & Bayes’ Theorem • Let so that in the limit as • or • we also get • or (Total Probability Theorem)

  26. Bayes’ Theorem (continuous version) • using total probability theorem in • We get the desired result

  27. Example: Coin Tossing Problem Revisited • probability of obtaining a head in a toss. • For a given coin, a-priori p can possess any value in (0,1). • : A uniform in the absence of any additional information • After tossing the coin n times, k heads are observed. • How can we update this is new information? • Let A= “k heads in n specific tosses”. • Since these tosses result in a specific sequence, • and using Total Probability Theorem we get Solution

  28. Example - continued • The a-posteriori p.d.f represents the updated information given the event A, • Using • This is a beta distribution. • We can use this a-posteriori p.d.f to make further predictions. • For example, in the light of the above experiment, what can we say about the probability of a head occurring in the next (n+1)th toss?

  29. Example - continued • Let B= “head occurring in the (n+1)th toss, given that k heads have occurred in n previous tosses”. • Clearly • From Total Probability Theorem, • Using (1) in (2), we get: • Thus, if n =10, and k = 6, then • which is more realistic compare to p = 0.5.

More Related