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I am trying to optimise my likelihood function of R_j and R_m using optim to estimate al_j, au_j, b_j and sigma_j. This is what I did.

a = read.table("D:/ff.txt",header=T)
attach(a)   
a

  R_j         R_m
1  2e-03 0.026567295
2  3e-03 0.009798475
3  5e-02 0.008497274
4 -1e-02 0.012464578
5 -9e-04 0.002896023
6  9e-02 0.000879473
7  1e-02 0.003194435
8  6e-04 0.010281122

The parameters al_j, au_j, b_j and sigma_j need to be estimated.

llik=function(R_j,R_m)
 if(R_j< 0)
 {
 sum[log(1/(2*pi*(sigma_j^2)))-(1/(2*(sigma_j^2))*(R_j+al_j-b_j*R_m))^2]
 }else if(R_j>0)
 {
 sum[log(1/(2*pi*(sigma_j^2)))-(1/(2*(sigma_j^2))*(R_j+au_j-b_j*R_m))^2]
 }else if(R_j==0)
 {
 sum(log(pnorm(au_j,mean=b_j*R_m,sd=sigma_j)-pnorm(al_j,mean=b_j*R_m,sd=sigma_j)))
 }

start.par=c(al_j=0,au_j=0,sigma_j=0.01,b_j=1) 
out1=optim(llik,par=start.par,method="Nelder-Mead")

Error in pnorm(au_j, mean = b_j * R_m, sd = sigma_j) : 
  object 'au_j' not found
share|improve this question
    
You formatted your code using the "quote" instead of the "code" syntax. I tried to fix it, but as I don't know the syntax of the R language, review your question. If you are not familiar with markdown, read the fomatting help that shows up when editing a question on the right side of your browser. Cheers! –  mac Jul 2 '11 at 23:11

2 Answers 2

up vote 2 down vote accepted

It is difficult to tell where to start on this.

As @mac said, your code is difficult to read. It also contains errors.

For example, if you try sum[c(1,2)] you will get an error: you should use sum(c(1,2)). In any case, you seem to be taking the sum in the wrong place. You cannot use if and else if on vectors, and need to use ifelse. You have nothing to stop the standard deviation going negative. There is more.

The following code runs without errors or warnings. You will still have to decide whether it does what you want.

a <- data.frame( R_j = c(0.002,0.003,0.05,-0.01,-0.0009,0.09,0.01,0.0006),
                 R_m = c(0.026567295,0.009798475,0.008497274,0.012464578,
                         0.002896023,0.000879473,0.003194435,0.010281122) )

llik = function(x) 
   { 
    al_j=x[1]; au_j=x[2]; sigma_j=x[3];  b_j=x[4]
    sum(
        ifelse(a$R_j< 0, log(1/(2*pi*(sigma_j^2)))-
                           (1/(2*(sigma_j^2))*(a$R_j+al_j-b_j*a$R_m))^2, 
         ifelse(a$R_j>0 , log(1/(2*pi*(sigma_j^2)))-
                           (1/(2*(sigma_j^2))*(a$R_j+au_j-b_j*a$R_m))^2,
                          log(pnorm(au_j,mean=b_j*a$R_m,sd=sqrt(sigma_j^2))-
                           pnorm(au_j,mean=b_j*a$R_m,sd=sqrt(sigma_j^2))))) 
       )
   } 

start.par = c(0, 0, 0.01, 1) 
out1 = optim(llik, par=start.par, method="Nelder-Mead") 
share|improve this answer
    
Thank for your help. I am wondering, is there a way to let R estimates the initial values start.par because the results are different depending on what initial values you choose. They do not seem to converge a specific answer. Also the code is giving same results if I make the logs negative(i.e to make it optimize instead of minimise). Thanks in advance-Edward –  rder Jul 4 '11 at 15:12

Let's start with the error message:

Error in pnorm(au_j, mean = b_j * R_m, sd = sigma_j) : 
  object 'au_j' not found

So R is telling you that when it got to the pnorm call, it couldn't find anything called 'au_j' to use in that call. Your next step should be to look at your function, llik, and try to identify how you expect the variable 'au_j' to be defined within that function.

At this point, the answer should be fairly clear (maybe!). Nowhere in llik is the variable 'au_j' assigned a value. So it won't be 'created' inside the function. R's scoping rules will then cause it to look outside the function in the global environment for something called 'au_j'.

And you might say that here is where things should work, since you assigned 'au_j' a value within start.par. But that's a list, and R can't find the named object 'au_j' inside a list like that.

So the solution here is most likely to rework your function llik so that it takes as arguments everything that it will use, so you're going to add everything in start.par to the arguments of llik. Something like:

llik <- function(par=c(al_j,au_j,sigma_j,b_j),R_j,R_m){...}

and then within llik you'll refer to al_j using par[1] and so forth. Then the optim call should look something like:

optim(start.par,llik,R_j=a$R_j,R_m=a$R_m)

Since you've attached your data, in a, you probably don't have explicitly pass the arguments R_j and R_m in the optim call, but it's probably good practice to do so.

I think I've reconstructed what you're trying to accomplish here (modulo the math, which I haven't even glanced at), but I confess that your code is a bit hard to parse. I would suggest spending some time with the examples in ?optim to make sure you understand how that function is called.

share|improve this answer
    
Thank you so much, you have helped a lot. I am still new in R so I am still learning. –  rder Jul 4 '11 at 15:13

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