Performas Metropolis Hastings on the logistic regression model to draw
sample from posterior. Uses a matched curvature Student's t candidate
generating distribution with 4 degrees of freedom to give heavy tails.
the number of steps to use in the Metropolis-Hastings updating
priorMean
the mean of the prior
priorVar
the variance of the prior
mleMean
the mean of the matched curvature likelihood
mleVar
the covariance matrix of the matched curvature likelihood
startValue
a vector of starting values for all of the regression
coefficients including the intercept
randomSeed
a random seed to use for different chains
plots
Plot the time series and auto correlation functions for each of
the model coefficients
Value
A list containing the following components:
beta
a data frame containing the sample of the model coefficients
from the posterior distribution
mleMean
the mean of the matched
curvature likelihood. This is useful if you've used a training set to
estimate the value and wish to use it with another data set
mleVar
the covariance matrix of the matched curvature likelihood. See
mleMean for why you'd want this