AP Statistics Curriculum 2007 Bayesian Other
Bayesian Inference for the Binomial Distribution
The parameters of interest in this section is the probability P of success in a number of trials which can result in either success or failure with the trials being independent of one another and having the same probability of success. Suppose that there are n trials such that you have an observation of x successes from a binomial distribution of index n and parameter P
x ~ B(n,P)
subsequently, we can show that p(x|P) = \({n \choose x}\) \( P^x \) \((1 - P)^{n - x}\) , (x = 0, 1, …, n)
p(x|P) is proportional to \(P^x (1 - P)^{n - x}\)
If the prior density has the form: p(P) proportional to \(P^{α - 1}\)(1 – P)β – 1 , (P between 0 and 1)
then it follows the beta distribution P ~ β(α,β)
From this we can appropriate the posterior which evidently has the form
p(P|x) is proportional to \(P^{α + x – 1}\)(1 – P)^{β + n – x – 1}
The posterior distribution of the Binomial is
(P|x) ~ β(α + x, β + n – x)