producing a grid of results in R

I am writing some code to do a maximum likelihood estimation of some parameter values, and I am trying to create a surface plot of parameter values taken from the optim function, and need to create a grid to do so. It is the part whereby I need to create a grid that is confounding me, My MLE function looks like:

loglike<-function(par,dat,scale)
{ ptp<-dat[1:length(dat)-1]
ptp1<-dat[2:length(dat)]

r<-par['r']
k<-par['k']
sigma<-par['sigma']

if(scale=='log')
{
return(sum(dnorm(log(ptp1)-log(ptp)*exp(r-(ptp/k)),mean=0,sd=sigma,log=T)))
}

if (scale=='sqrt')
{
return(sum(dnorm(sqrt(ptp1)-sqrt(ptp)*exp(r-(ptp/k)),mean=0,sd=sigma,log=T)))
}

if (scale=='linear')
{
return(sum(dnorm(ptp1-ptp*exp(r-(ptp/k)),mean=0,sd=sigma,log=T)))
}
}

I have already created some data from the optim giving me corresponding parameter values

I have tried taking output from the optim function and putting it into the expand.grid function like:

gridlog<-expand.grid(logs[,"r"],logs[,"sigma"],logs[,"k"])

But all this is doing is creating a large matrix filled with all the same values.

Where the data going into the expand.grid function is filled from :

logs<-list()
for(i in seq(1,300,0.1)){

}
logs<-do.call(rbind,logs)

This creates a 300 long matrix of corresponding sigma's r's and k's

My data is:

c(100, 128.675595618645, 75.436115414503, 146.398449792328, 102.419994706974,
207.397726741841, 23.4579309898438, 42.4085746569567, 119.498216389673,
59.7845591706614, 119.37201616882, 252.047672957539, 28.3165331949818,
57.4918213065119, 311.615538092141, 8.53779749227741, 31.5382580618134,
115.617013730077, 43.6907812963781, 70.9139870053552, 123.004040266686,
132.575148404208, 114.813947981006, 115.950032495637, 120.891472762661,
97.0207348527786, 235.618894638631, 17.0936655960759, 49.4419128844531,
112.476950569973, 58.3241789008329, 80.0300102105128, 103.248819284132,
99.1968765946717, 113.905769052605, 143.181386861766, 62.962989192695,
174.054591300157, 39.9156352770331, 81.8344415290292, 176.631480374326,
51.5564038694108, 131.542259464434, 72.5981749979889, 38.9733086158719,
126.808054274927, 73.6960412245896, 62.5484608101147, 55.539355637003,
137.888502803112, 106.921926717155, 140.000738390606, 162.512046122238,
26.2949484171288, 80.4110888678422, 74.0481779531392, 33.9890286552257,
142.477859644323, 55.1820570626643, 107.242498924143, 56.8497685792794,
143.676120209843, 84.2334844367379, 67.0330079913484, 109.96246704725,
157.216290273118, 59.4585552091703, 67.2986524284706, 55.2529503291083,
38.932960005221, 62.7454169122216, 210.687014199037, 38.7348882392115,
75.6645116341029, 115.924283193145, 117.772958122253, 45.5313134644358,
112.306998515583, 38.7001172906923, 66.1308507048062, 122.516808638813,
38.8283932430479, 168.014298040365, 38.0902373313928, 117.414876109978,
168.615976661456, 66.5037228223079, 94.4482610053865, 505.254990783834,
1.05181785078369, 1.77594058056118, 4.36034444400473, 12.1485473106491,
82.2373017835424, 58.9775202042162, 132.907299665772, 51.2346939236555,
123.251093218535, 143.077217943039, 96.1524852870813)

Any help anyone could give would be greatly appreciated!!

-
gridlog<-expand.grid(logs[,"r"],logs[,"sigma"],logs[,"k"]) works perfectly well for me (granted that I tried only with a logs of 30 values instead of 300). FYI the 0.1 in for i in seq(1,300,0.1) is useless since you can't index with a decimal value. That's why, by the way, you have a logs of 300 rows instead of a logs with 2991 as you should have had with seq(1,300,0.1). The results contained in logs are the results given for every i in seq(1,300,1). –  plannapus Mar 12 '13 at 9:43

#find optimum:
fit<-optim(par=c(r=1,k=1,sigma=1),fn=loglike,dat=dat,scale='log',

fit\$par
r           k       sigma
0.3911590 254.4989317   0.5159761

# make grid around optimum with few selected sigma values:

rs<-seq(0.01,1,length=30)
ks<-seq(230,280,length=30)
sigmas<-c(0.25,0.5159761,0.75)

# this will contains all parameter combinations
# and the corresponding likelihood values

mlegrid<-cbind(as.matrix(expand.grid(rs,ks,sigmas)),0)  #Matrix
colnames(mlegrid)<-c('r','k','sigma','likelihood')

for(i in 1:nrow(mlegrid)){ #go through all combinations
mlegrid[i,4]<- loglike(par=mlegrid[i,1:3],dat=dat,scale='log')
}
mlegrid[which.max(mlegrid[,4]),]
r           k       sigma  likelihood
0.3855172 257.5862069   0.5159761 -74.9940496
# almost the same as from optim
# (differences due to sparse grid, more dense gives more accurate results)

#for interactive plots, static versions with `persp` function
library(rgl)
persp3d(x=rs,y=ks,
z=matrix(mlegrid[mlegrid[,3]==sigmas[1],4],nrow=length(rs)),col=2)
#with sigma from optim
persp3d(x=rs,y=ks,
z=matrix(mlegrid[mlegrid[,3]==sigmas[2],4],nrow=length(rs)),col=2)
persp3d(x=rs,y=ks,
z=matrix(mlegrid[mlegrid[,3]==sigmas[3],4],nrow=length(rs)),col=2)
-
I've just been able to try this and the fourth column of the mlegrid isn't being filled by the likelihood values. –  user1987097 Mar 14 '13 at 12:02
No it just creates the mlegrid but the fourth column, "likelihood" is filled with 0's. –  user1987097 Mar 14 '13 at 13:00
It creates a matrix with all the combinations of r k and sigma specified, but no value in the likelihood column of the matrix. I would guess that it's not actually putting values into the likelihood function. –  user1987097 Mar 14 '13 at 14:06
Now with the latest edit it produces error "dnorm(x, mean, sd, log) : Non-numeric argument to mathematical function." So I understand that it is passing symbols rather than the value entries of the mlegrid –  user1987097 Mar 14 '13 at 14:25
Okay I've just tried plotting it and I'm getting error message " "increasing 'x' and 'y' values expected." I'm also not sure that the function loglike function is having values passed to it properly as I'm getting very strange likelihood values. Have you tried running the original code? That seems to return more probably likelihood values than what you have posted. –  user1987097 Mar 14 '13 at 19:18