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I am a Win-7 user with R 2.15.2

Can someone help me why is the following model not converging well close to simple logit model estimates?

Edited

 Mydata <- structure(list(gg = c(13.659955, 6.621436486, 3.017166776, 2.516795069, 
3.928538296, 4.211960532, 3.235445955, 5.152860411, 18.96466673, 
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2.110549733, 6.095182338, 6.000660354, 6.691960157, 1.796172588, 
2.531234555, 2.992017156, 2.882403206, 6.066420081, 5.930524609, 
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130L, 131L, 132L, 133L, 134L, 135L, 136L, 137L, 138L, 139L, 140L, 
141L, 142L, 143L, 144L, 145L, 146L, 147L, 148L, 149L, 150L, 151L, 
152L, 153L, 154L, 155L, 156L, 157L, 158L, 159L, 160L, 161L, 162L, 
163L, 164L, 165L, 166L, 167L, 168L, 169L, 170L, 171L, 172L, 173L, 
174L, 175L, 176L, 177L, 178L, 179L, 180L, 181L, 182L, 183L, 184L, 
185L, 186L, 187L, 188L, 189L, 190L, 191L, 192L, 193L, 194L, 195L, 
196L, 197L, 198L, 199L, 200L, 201L, 202L, 203L, 204L, 205L, 206L, 
207L, 208L, 209L, 210L, 211L, 212L, 233L, 234L, 235L, 236L, 237L, 
238L, 239L, 240L, 241L, 242L, 243L, 244L, 245L, 246L, 247L, 248L, 
249L, 250L, 251L, 252L, 253L, 254L, 255L, 256L, 257L, 258L, 259L, 
260L, 261L, 262L, 263L, 264L, 265L, 266L, 267L, 268L, 269L, 270L, 
271L, 272L, 273L, 274L, 275L, 276L, 277L, 278L, 279L, 280L, 281L, 
282L, 283L, 284L, 285L, 286L, 287L, 288L, 289L, 290L, 291L, 292L, 
293L, 294L, 295L, 296L, 297L, 298L, 299L, 300L, 301L, 302L, 303L, 
304L, 305L, 306L, 307L, 308L, 309L, 310L, 311L, 312L, 313L, 314L, 
315L, 316L, 317L, 318L, 319L, 320L, 321L, 322L, 323L, 324L, 325L, 
326L, 349L, 350L))

Model code for likelihood estimates:

Simplelogit <- glm(OutCome ~ gg+ss+dd, data = Mydata, family = "binomial")

Model code using R2WinBUGS: (EDITED)

model1 ="
model
{
  # likelihood
  for(i in 1:N)
    {
    Y[i] ~ dbin(p[i],N)
    logit(p[i])<- beta1[1]+beta1[2]*X[1]+beta1[3]*X[2]+beta1[4]*X[3]
    }

    #prior
    beta1[1]~dnorm(1,1.0E-02)
    beta1[2]~dnorm(1,1.0E-02)
    beta1[3]~dnorm(1,1.0E-02)
    beta1[4]~dnorm(1,1.0E-02)
}
"
writeLines(model1,con='Model.txt')

x1 <- unlist(Mydata$gg)
x2 <- unlist(Mydata$ss)
x3 <- unlist(Mydata$dd)
N=c(nrow(Mydata))
datalist <- list(N=N,Y=c(Mydata$OutCome),X=c(x1,x2,x3))
inits <- function() list(beta1=c((Simplelogit$coefficients[,1])))
MyPara <- c("beta1")

require(R2WinBUGS)
BayesianModel <- bugs(datalist,inits,MyPara,model.file='Model.txt',n.chains=1,n.iter=54000,n.burnin=4000,n.sim=50000,program=c('WinBUGS'),debug=FALSE,codaPkg=FALSE,save.history=TRUE,bugs.directory='C:/Program Files/WinBUGS14/',working.directory = getwd()) #,over.relax=TRUE

as.numeric(BayesianModel$summary[c(1:4)),1])
#results:
-48.63550   3.47384  -0.69866   0.09043

And then with Traditional method / without using bayesian method

Simplelogit <- glm(OutCome ~ gg+ss+dd, data = Mydata, family = "binomial")
c(as.matrix(Simplelogit$coefficients[c(1:4),1]))
# result is:
-20.71281   3.47408  -0.31233  -0.03906

Please suggest if I need to use different model of change the prior or the syntax...

share|improve this question
    
When I try to run your code using 'glm' I get a message that the algorithm did not converge. The one time I did get estimates they were: -7657.83, 1188.63, -141.86, and -13.73. Maybe I am doing something wrong, or maybe you left out some code for the 'glm' approach. –  Mark Miller Jan 24 '13 at 23:43
    
When I paste 'Mydata' into R I get a data set with four columns. However, in your WinBUGS code you seem to refer to a fifth and a seventh column. Are you sure that the code you posted actually runs? –  Mark Miller Jan 25 '13 at 0:33
    
Thanks. I edited the code with correct columns indices. –  Stat-R Jan 25 '13 at 1:44
    
I still get estimates of -7657.83, 1188.63, -141.86, and -13.73 with glm. Not, -20.71281, 3.47408, -0.31233 and -0.03906. Are you sure the estimates -20.71281, 3.47408, -0.31233 and -0.03906 were obtained with the data set 'Mydata' that you posted? –  Mark Miller Jan 25 '13 at 1:53
    
Sorry, in the attempt of providing sample data I actually forgot to change other things. Now the Mydata is the one I used to get the above co-efficient –  Stat-R Jan 25 '13 at 2:01

3 Answers 3

I have not run the code, but I can spot two errors:

There is no Mydata$yy, so the vector is too short (only 616, should be 3*308). Should be x3<-unlist(Mydata$dd).

And you did not notice the error, because the indexing in the logit line is wrong. Should be something like

logit(p[i])<- beta1[1]+beta1[2]*X[i]+beta1[3]*X[i+2*N]+beta1[4]*X[i+3*N]

share|improve this answer
    
yes, and almost certainly the priors for betas should be uninformative, i.e. more wide flat normal centered at 0, like dnorm(0, 1.0E-10). That could be the problem why the result is different, @Stat-R –  TMS Jan 25 '13 at 8:35
    
@Dieter what is n? Can you please re-write the whole model please? –  Stat-R Jan 25 '13 at 9:28
    
Sorry, that should be N, not n. Corrected. I don't want to rewrite the whole model, because I cannot check it carefully, it was just an hint; there might be other errors, and I do not have WinBUGs, just JAGS, which probably requires more changes. –  Dieter Menne Jan 25 '13 at 9:54

The jags version (I hate installing RWinBugs)

# Assuming your data have been saved in mydata.rdata
load("mydata.rdata")
library("rjags")

model1 ="
model
{
  # likelihood
  for(i in 1:N)
  {
    logit(p[i])<- beta0+betagg*gg[i]+betass*ss[i]+betadd*dd[i];
    Y[i] ~ dbin(p[i],N); # Should be dbern probably
  }

  #prior
  beta0~dnorm(1,1.0E-02);
  betagg~dnorm(1,1.0E-02);
  betass~dnorm(1,1.0E-02);
  betadd~dnorm(1,1.0E-02);
}
"
writeLines(model1,con='Model.txt')

datalist <- with(Mydata, list(N=nrow(Mydata),Y=as.numeric(OutCome),gg=gg,ss=ss,dd=dd))
# A bit of cheating: initial values adapted after first run
inits <- list(beta0=-8,betagg=0.2,betass=0.05,betadd=0.002)

m <- jags.model("Model.txt",datalist,init=inits)
update(m, 1000)
x <- coda.samples(m, c("beta0","betagg","betass","betadd"), n.iter=10000)
plot(x) # Well, not prettty, but acceptable
share|improve this answer
    
Thanks. But this still does not converge to likelihood estimates. –  Stat-R Jan 25 '13 at 16:54
    
Because it should be dbern. And for better convergence, the coefficients should be scaled. –  Dieter Menne Jan 25 '13 at 17:12

Another solution using stan

load("mydata.rdata")
library(rstan)
library(ggmcmc)
library(coda)

model1 ="
data {
  int<lower=0>  N;
  int<lower=0,upper=1> Y[N];
  real gg[N];
  real ss[N];
  real dd[N];
}
parameters{
  real  beta0;
  real  betagg;
  real  betass;
  real  betadd;
}
model
{
  #prior
  beta0 ~ normal(-2,30);
  betagg ~ normal(20,30);
  betass ~ normal(-3,30);
  betadd ~ normal(-10,40);

# likelihood
  for(i in 1:N)
  {
    Y[i] ~ bernoulli(inv_logit(beta0+betagg*gg[i]+betass*ss[i]+betadd*dd[i]));
  }

}
"

MyPar = scale(Mydata[,-4])
datalist <- list(N=nrow(Mydata),
                 Y=as.numeric(Mydata$OutCome),
                 gg=MyPar[,"gg"],ss=MyPar[,"ss"],dd=MyPar[,"dd"])

m <- stan(model_code=model1,iter=20000,data= datalist,n.chains=4)

ggmcmc(ggs(m))
print(m)
share|improve this answer

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