# How to get N values along with pearson correlation?

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. 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(...) {
cor.test(...)\$parameter+2
}
``````

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