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I am running a Bayesian logit with MCMCpack::MCMClogit. The syntax is easy and follows lm() or glm(), but I can't find any equivalent of the predict.glm function. Is there any way of predicting the probabilities of the outcomes in MCMClogit for each unit of observation in the dataframe? predict() is especially useful for validating training data from new data, which is what I ultimately have to do.

df = read.csv("http://dl.dropbox.com/u/1791181/MCMC.csv")#Read in data
model.glm = glm(SECONDARY.LEVEL ~ AGE + SEX, data=df, family=binomial(link=logit))
glm.predict = predict(model.glm, type="response")

For MCMClogit():

model.mcmc = MCMClogit(SECONDARY.LEVEL ~ AGE + SEX, data=df, mcmc=1000)
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1 Answer 1

The description of the function says :

This function generates a sample from the posterior distribution of a logistic regression model using a random walk Metropolis algorithm.

I think therefore that your model.mcmc already contains the points that MCMClogit() has simulated.

You can use str to see what it contains and summary and plot functions on it like in the example there : http://cran.r-project.org/web/packages/MCMCpack/MCMCpack.pdf

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Simon... the simulated outputs are the marginal posteriors. I am looking for the overall model predicted values. –  user702432 Aug 7 '12 at 8:26
The MCMClogit() function does not give you the model, but only the posterior values, so that you cannot find a function that predicts from model.mcmc as there's no model in it. –  Pop Aug 7 '12 at 8:30

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