Stack Overflow is a community of 4.7 million programmers, just like you, helping each other.

Join them; it only takes a minute:

Sign up
Join the Stack Overflow community to:
  1. Ask programming questions
  2. Answer and help your peers
  3. Get recognized for your expertise

I wrote the following code and got the error: number of items to replace is not a multiple of replacement length at code line:

 X_after[count, ] = c(censN1, censN2, censN3)

After searching the internet, I found the problem is probably caused by the unmatched number of samples size of the pre-determine n_samples of NA and the final X_after dataset. How can I adjust the matrix code such that ncol is dynamically determined after the loop rather than pre-determined at n_samples? Or if you have other solutions to this error message, please chime in as well.

multiLodSim <- function (GM, GSD, n_samples, n_iterations, p) {    
  X_after <- matrix(NA_real_, nrow = n_iterations, ncol = n_samples)
  delta <- matrix(NA_real_, nrow = n_iterations, ncol = n_samples)
  mu <- log(GM)
  sigma <- log(GSD)
  lod1 <- quantile(rlnorm(100000,mu,sigma),p)
  lod2 <-  quantile(rlnorm(100000,mu,sigma),(p*0.95))
  lod3 <- quantile(rlnorm(100000,mu,sigma),(p*0.9)) 
  pct_cens <- numeric(n_iterations)
  count <- 1
   while(count <= n_iterations) {     
   sub_samples = n_samples/3   # divide the total sample into third (for 3 lods)
  n1 <- rlnorm(sub_samples,mu,sigma)
censN1 <- sort(pmax(n1,lod1))   
n2 <- rlnorm(sub_samples,mu,sigma)
censN2 <- sort(pmax(n2,lod1))
censN2[censN2==lod1] <- lod2   
n3 <- rlnorm(sub_samples,mu,sigma)
censN3 <- sort(pmax(n3,lod1))    
censN3 [censN3==lod1] <- lod3
X_after[count, ] = c(censN1, censN2, censN3)
delta [count, ] = X_after <= lod1  # nondetects= TRUE (1), detects= FALSE (0)
pct_cens [count] = mean(delta[count,])   #
if (pct_cens [count]  > 0 & pct_cens [count] < 1 ) count <- count + 1}}

 a = multiLodSim(GM=1,GSD=2,n_samples=20,n_iterations=5,p=0.3)

Updates: After reading your comments, I made changes to these code lines and it is working. Thank you for your help.

n1 = rlnorm(round(sub_samples),mu,sigma)
n2 = rlnorm(round(sub_samples),mu,sigma)
sub_samples3 = n_samples - length(n1)-length(n2)
n3 = rlnorm(subsamples3, mu,sigma)
share|improve this question
Where are mu and sigma defined for the calls to rlnorm? – mnel Aug 8 '12 at 4:27
Other than mnel's answer, I think you're going to run into trouble on this line: delta [count, ] = X_after <= lod1. It seems as though it works if you replace it with delta [count, ] = X_after[count,] <= lod1 (after, of course, taking into consideration that ncol for X_after and delta must be a multiple of 3) – Edward Aug 8 '12 at 4:44
You will also want have a line in your function after the final if statement / while loop to return something. (I presume X_after) – mnel Aug 8 '12 at 4:45
Must all three the sub-samples be exactly the same size? – Edward Aug 8 '12 at 4:48
up vote 6 down vote accepted

Your problem lies in the fact that sub_samples = n_samples/3 is not a whole number.

When you create a sample of fractional size it creates a sample of floor(size)

## [1] 1

Thus, when you recombine your data length( c(censN1, censN2, censN3)) does not (necessarily) equal n_sample.

Thus, you need a method for dealing with numbers of samples that are not divisible by 3.

share|improve this answer

Your Answer


By posting your answer, you agree to the privacy policy and terms of service.

Not the answer you're looking for? Browse other questions tagged or ask your own question.