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How to interpret posterior probability of an regression variable?

I am using the following model in WINBUGS to run a hierarchical Bayesian regression where the beta are my covariates:

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If I modify this model by adding the following code:

# posterior probabilities of Positive beta's
p.beta0 <- step( beta0 )
p.beta1 <- step( beta1 )

Then I can assess the posterior probability ( PP ) of the (positive or negative) association of the beta covariates.

My beta values are:

beta0 = 0.23434
beta1 = -0.4582

With this code, the PP of beta0 is 0.959033 , while the PP of beta1 is 0.015043 . My interpretation for beta0 is that there is a 95.9033% positive association for this covaraite. However, I am not sure how to interpret for beta1 since this has a negative association and a low posterior probability. I am not sure if it is an issue with my code for computing the Posterior Probabilities.

Any insight is welcome.

beta are your regression coefficients, not the covariates. To understand beta0 and beta1 you have to look at the model. Part of it says that log(mu[i]) = beta0 + beta1*aff[i]/10 , where mu[i] is the cancer rate of area i . exp(beta0) shows you the average cancer rate over all areas with aff = 0. Because beta1 = -0.4582 is negative, cancer rate reduces when aff increases: every time you increase aff by 10, the log cancer rate decreases by 0.4582.

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