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I am conducting a bayesian analysis in winbugs. Here is my model:

 y[i] ~ dnorm( mu[i], tau )
 b[i] ~ dnorm(0.0, alpha)    

 mu_i = 1- (beta1*x1 + beta2*x2 + ... + beta20*x20) + b[i]

where b[i] is the i-th random effect. I am wondering how I can specify prior distributions for tau, alpha and the betas. What points are considered? Any help would be greatly appreciated.


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1 Answer 1

Normally, you use dgamma for prior distribution of precision parameter:

tau ~ dgamma(0.01, 0.01)
alpha ~ dgamma(0.01, 0.01)

For regression coefficients, I would use something like flat normal:

beta ~ dnorm(0, 1/(100000^2))

More info on regression coefficients here.

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