问题
I'm trying to get the Pearson correlation coefficient between to variables in R. This is the scatterplot of the variables:
ggplot(results_summary, aes(x =D_in, y = D_ex)) + geom_point(col=ifelse(results_summary$FDR < 0.05, ifelse(results_summary$logF>0, "red", "green" ), "black"))
As you can see, the variables correlate pretty well, so I'm expecting a high correlation coefficient. However when I try to get the Pearson correlation coefficient I'm getting a NaN!
> cor(results_summary$D_in, results_summary$D_ex, method="spearman")
[1] 0.868079
> cor(results_summary$D_in, results_summary$D_ex, method="kendall")
[1] 0.6973086
> cor(results_summary$D_in, results_summary$D_ex, method="pearson")
[1] NaN
I checked if my data contains any NaN:
> nrow(subset(results_summary, is.nan(results_summary$D_ex)==TRUE))
[1] 0
> nrow(subset(results_summary, is.nan(results_summary$D_in)==TRUE))
[1] 0
> cor(results_summary$D_in, results_summary$D_ex, method="pearson", use="complete.obs")
[1] NaN
But it's seems that is not the reason of the resulting NaN. Can some one give any clue about what is might happening here?
Thanks for your time!
回答1:
That seems odd. My guess is that there is some problem with the input data (which was not revealed by the check you mentioned). I suggest you running:
any(!is.finite(results_summary$D_in))
any(!is.finite(results_summary$D_ex))
You could also try calculating Pearson's correlation by hand, to try to get some insight on where the problem is (in the numerator and/or denominator?):
pearson_num = cov(results_summary$D_in, results_summary$D_ex, use="complete.obs")
pearson_den = c(sd(results_summary$D_in), sd(results_summary$D_ex))
来源:https://stackoverflow.com/questions/31854426/why-pearson-correlation-output-is-nan