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I am using the code below to calculate the correlation map between two datasets.this code worked fine and I got the results which look like:![enter image description here]![enter image description here][1].

I would like also to get another map displaying how many pairs were used in calculation of each pixel so I get map of N a long with map of correlation. as per Paul Hiemstra this function gave cor and N:

 cor_withN = function(...) {
      cor_obj = cor.test(...)
       print(sprintf("N = %s", cor_obj$parameter + 2))
       return(data.frame(cor = cor_obj$estimate, N = cor_obj$parameter + 2))
          cor_withN(runif(100), runif(100))
             [1] "N = 100"
                   cor   N
            cor 0.1718225 100 

when I simply replaced cor by cor_withN I got this error:

    Error in cor.test.default(...) : not enough finite observations

How can I imply this function in my code to get two maps of correlation and N values ?

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1 Answer 1

up vote 1 down vote accepted

1. Error

Error in cor.test.default(...) : not enough finite observations

According to corr.test source (http://svn.r-project.org/R/trunk/src/library/stats/R/cor.test.R) this error can appear in two cases:

  1. You are using Pearson's correlation and have less than 3 finite pairs of observations.
  2. You are using Kendall's or Spearman's correlation and have less than 2 pairs.

Indeed, cor.test(c(1,2), c(2,3)) causes exactly the same error, while cor(c(1,2), c(2,3)) gives an answer.

Note, that cor.test uses complete.cases(x,y) for calculations. So, look into your data - probably there are not enough pairs somewhere.

2. Function

cor returns numeric value, your function corr_withN returns data.frame. So, it doesn't look like you can simply replace one by another.

As I understand you need just a matrix of size 1440x720 which will be plotted over the map. In this case you can just use cor for the first plot, and simple function returning the number of pairs used to calculate correlation for the second. The function itself can be as simple as:

cor_withN <- function(...) {

UPDATE: After comment

If cor_withN must return NA when there are less than 3 pairs it should be modified:

cor_withN <- function(...) {
  res <- try(cor.test(...)$parameter+2, silent=TRUE)
  ifelse(class(res)=="try-error", NA, res)

This function tries to compute correlation and, if it fails, returns NA or number of pairs otherwise.

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@Barry: Please, see update. –  redmode Jan 31 '13 at 15:43

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