Nothing
#################################################
# Section 7.10 Posterior Predictive Model Checking
#################################################
library(LearnBayes)
data(hearttransplants)
attach(hearttransplants)
datapar = list(data = hearttransplants, z0 = 0.53)
start = c(4, -7)
fitgibbs = gibbs(poissgamexch, start, 1000, c(1,.15), datapar)
lam94=rgamma(1000,y[94]+alpha,e[94]+alpha/mu)
ys94=rpois(1000,e[94]*lam94)
hist(ys94,breaks=seq(-0.5,max(ys94)+0.5))
lines(y[94]*c(1,1),c(0,100),lwd=3)
S=readline(prompt="Type <Return> to continue : ")
prob.out=function(i)
{
lami=rgamma(1000,y[i]+alpha,e[i]+alpha/mu)
ysi=rpois(1000,e[i]*lami)
pleft=sum(ysi<=y[i])/1000
pright=sum(ysi>=y[i])/1000
min(pleft,pright)
}
pout.exchange=sapply(1:94,prob.out)
windows()
plot(pout,pout.exchange,xlab="P(extreme), equal means",
ylab="P(extreme), exchangeable")
abline(0,1)
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