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I'm trying to generate a data frame of simulated values from the student's t distribution using the standard stochastic equation. The function I use is as follows:

matgen<-function(means,chi,covariancematrix)
{
 cols<-ncol(means);
 normals<-mvrnorm(n=500,mu=means,Sigma = covariancematrix);
 invgammas<-rigamma(n=500,alpha=chi/2,beta=chi/2);
 gen<-as.data.frame(matrix(data=NA,ncol=cols,nrow=500));
 i<-1;
 while(i<=500)
 {
   gen[i,]<-t(means)+normals[i,]*sqrt(invgammas[i]);
   i<=i+1;
 }
return(gen);
}

If it's not clear, I'm trying to create an empty data frame, that takes in values in cols number of columns and 500 rows. The values are numeric, of course, and R tells me that in the 9th row:

gen<-as.data.frame(matrix(data=NA,ncol=cols,nrow=500));

There's an error: 'non-numeric matrix extent'.

I remember using as.data.frame() to convert matrices into data frames in the past, and it worked quite smoothly. Even with numbers. I have been out of touch for a while, though, and can't seem to recollect or find online a solution to this problem. I tried is.numeric(), as.numeric(), 0s instead of NA there, but nothing works.

2
  • 1
    I believe the problem is that cols is not numeric. However, you don't show how you call the function, in particular what you pass to means. PS: Using a while loop when you can use a for loop is just inefficient. But I don't think you need a loop at all.
    – Roland
    Aug 5, 2016 at 10:24
  • 1
    @Roland Thanks for your help! I used covariancematrix to fetch that dimension, and now it works! Just to help me learn, could you explain why you think I don't need a loop at all? Aug 5, 2016 at 17:28

1 Answer 1

5

As Roland pointed out, one problem is, that col doesn't seem to be numeric. Please check if means is a dataframe or matrix, e.g. str(means). If it is, your code should not result in the error: 'non-numeric matrix extent'.

You also have some other issues in your code. I created a simplified example and pointed out the bugs I found as comments in the code:

library(MASS)
library(LearnBayes)

means <- cbind(c(1,2,3),c(4,5,6))
chi <- 10

matgen<-function(means,chi,covariancematrix)
{
  cols <- ncol(means) # if means is a dataframe or matrix, this should work

  normals <- rnorm(n=20,mean=100,sd=10) # changed example for simplification
  # normals<-mvrnorm(n=20,mu=means,Sigma = covariancematrix) 
  # input to mu of mvrnorm should be a vector, see ?mvrnorm; but this means that ncol(means) is always 1 !?

  invgammas<-rigamma(n=20,a=chi/2,b=chi/2) # changed alpha= to a and beta= to b

  gen<-as.data.frame(matrix(data=NA,ncol=cols,nrow=20))

  i<-1
  while(i<=20)
  {
    gen[i,]<-t(means)+normals[i]*sqrt(invgammas[i]) # changed normals[i,] to normals [i], because it is a vector
    i<-i+1 # changed <= to <- 
  }
  return(gen)
}

matgen(means,chi,covariancematrix)

I hope this helps. P.S. You don't need ";" at the end of every line in R

1
  • 1
    Thanks for all the help! Especially for all the additional bits that you put in! The error with i<= would've made me feel so dumb had I gotten past this error by myself. Luckily, that's only open to millions of internet users now. (:D) I'm using mvrnorm() though, so normals is a matrix in the original code. I used the covariancematrix to fetch the number of columns since it is a data frame, and now the code works. Aug 5, 2016 at 17:23

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