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anova_bayes.R
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anova_bayes.R
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data("PlantGrowth")
head(PlantGrowth)
library(rjags)
mod1_string = " model {
for (i in 1:length(y)) {
y[i] ~ dnorm(mu[grp[i]], prec)
}
for (j in 1:3) {
mu[j] ~ dnorm(0.0, 1.0/1.0e6)
}
prec ~ dgamma(5/2.0, 5*1.0/2.0)
sig = sqrt( 1.0 / prec )
} "
mod2_string = " model {
for (i in 1:length(y)) {
y[i] ~ dnorm(mu[grp[i]], prec[grp[i]])
}
for (j in 1:3) {
mu[j] ~ dnorm(0.0, 1.0/1.0e6)
}
for (k in 1:3) {
prec[k] ~ dgamma(5/2.0, 5*1.0/2.0)
sig[k] = sqrt( 1.0 / prec[k] )
}
} "
set.seed(82)
data_jags = list(y=PlantGrowth$weight, grp=as.numeric(PlantGrowth$group))
params = c("mu", "sig")
inits1 = function() {
inits = list("mu"=rnorm(3,0.0,100.0), "prec"=rgamma(1,1.0,1.0))
}
inits2 = function() {
inits = list("mu"=rnorm(3,0.0,100.0), "prec"=rgamma(3,1.0,1.0))
}
mod1 = jags.model(textConnection(mod1_string), data=data_jags, inits=inits1, n.chains=3)
mod2 = jags.model(textConnection(mod2_string), data=data_jags, inits=inits2, n.chains=3)
update(mod1, 1e3)
update(mod2, 1e3)
mod1_sim = coda.samples(model=mod1, variable.names=params, n.iter=5e3)
mod2_sim = coda.samples(model=mod2, variable.names=params, n.iter=5e3)
mod1_csim = as.mcmc(do.call(rbind, mod1_sim))
summary(mod1_sim)
summary(mod2_sim)
dic1 <- dic.samples(mod1, n.iter = 1e4)
dic2 <- dic.samples(mod2, n.iter = 1e4)
dic1 - dic2