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I have two different data frames. From one I calculated Richness and in the other one I have Environmental Variables that I wish to correlate with each other as it follows in my code:

cor.test(Richness, E.4$Temp...C.)
cor.test(Richness, E.4$Cond..µS.cm.1.)
cor.test(Richness, E.4$pH)
cor.test(Richness, E.4$Alkalinity.Gran..mequiv.m.3.)
cor.test(Richness, E.4$HCO3)
cor.test(Richness, E.4$NO3.N..mg.m.3.)
cor.test(Richness, E.4$SO4..mg.l.)

This is just a short example. The E.4 data frame has 30 columns. Could you maybe please help me with an idea of how to write a one-line code for all this?


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Sure... try lapply( E.4 , cor.test , y = Richness ). Your x and y have swapped round in this example. –  Simon O'Hanlon Oct 23 '13 at 9:28
Perfect! Thank you @SimonO101! –  umbra Oct 23 '13 at 9:39
One more thing, Is there a way to extract the p-values from all these correlation tests and add them to a table? –  umbra Oct 23 '13 at 9:46
@umbra: see my update. –  EDi Oct 23 '13 at 9:58

1 Answer 1

up vote 0 down vote accepted

There you go:

df1 <- data.frame(Richness = 1:100)
df2 <- data.frame(Var1 = df1$Richness + rnorm(100), Var2 = rnorm(100))

lapply(1:ncol(df2), function(x) cor.test(df1$Richness, df2[ ,x]))


For the p-values you could use:

sapply(1:ncol(df2), function(x) cor.test(df1$Richness, df2[ ,x])$p.value)
share|improve this answer
Or you can just do lapply( df2 , cor.test , x = df1[,1] ) so then it becomes the same as the comment I left. –  Simon O'Hanlon Oct 23 '13 at 9:34

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