# how to calculate correlation with a sliding window?

I have a zoo object called aux with yearly data from 1961 to 2009:

``````     x\$nao x[, 2]
1961 -0.03   63.3
1962  0.20  155.9
1963 -2.98  211.0
``````

I want to calculate the correlation between the two columns using a 20 years sliding window. I am trying to use rollapply, but I don't seem to be able to make it work. I tried several different ways of doing it but always without success...

``````> rollapply(aux,20, cor(aux[,1],aux[,2],method="pearson"))
Error in match.fun(FUN) : 'cor(aux[, 1], aux[, 2], method = "pearson")' is not a function, character or symbol

> rollapply(aux,20, cor,method="pearson")
Error in FUN(coredata(data)[posns], ...) : supply both 'x' and 'y' or a matrix-like 'x'

> rollapply(aux,20, cor)
Error in FUN(coredata(data)[posns], ...) : supply both 'x' and 'y' or a matrix-like 'x'
``````

Can anybody tell me how to make `rollapply` work?

Thanks for helping!

-

Try this.

``````library(quantmod)
library(TTR)

#Set the seed so results can be duplicated
set.seed(123)

#Build a zoo object with typical price data
var1 <- zoo(cumprod(1+rnorm(50, 0.01, 0.05)), seq(1961, 2001, 1))
var2 <- zoo(cumprod(1+rnorm(50, 0.015, 0.1)), seq(1961, 2001, 1))
dat <- merge(var1=var1, var2=var2)
plot(dat)
grid()

#Calculate the percent returns for the two prices
del1 <- Delt(dat\$var1)
del2 <- Delt(dat\$var2)
dat <- merge(dat, del1=del1, del2=del2)
dimnames(dat)[[2]][3] <- "del1"
dimnames(dat)[[2]][4] <- "del2"