I want to check whether two variables are correlated or not after breaking the association between those two variables. And I am supposed to do it using permutation and using the kendall correlation coefficient. I am not sure if I am doing it the right way. Below is my code.

### This is original observed data
observed <- cor(myData$gene_dens,myData$qp.site,method = "kendall") 
plot(myData$gene_dens,myData$qp.site,main=paste("Corelation = ",observed))

### I am doing permuation here to break the association between the two variables I am looking at
perm = function(dataframe)

result1 = sample(dataframe$gene_dens,size = length(myData),replace = FALSE)



###I am using 10000 replicates because I want to make a null distribution so that I don't have to rely on the assumptions of the normal distribution
result = replicate(10000,perm(myData)) 

### myData is the vector containing the entire data of the csv file.


pvalue <- (sum(result < observed) + sum(result > observed))/length(result)
  • but do you think I am calculating the pvalue the right way? I am not sure how to do it while using kendall coefficient and Permutation. – Bakhtawar Oct 5 '16 at 23:03
  • Ok Thankyou. I'll see what I can do here. Thanks :) – Bakhtawar Oct 5 '16 at 23:16

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