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I have a data frame with daily data in R (148 columns by 6230 rows). I want to find the correlations coefficients using sliding windows with length of 600 (days) with windows displacement of 5 (days) and trying to generate 1220 correlation matrices (approx.). All the examples that I saw used only one information vector. There exist an easy way to find those correlation matrices using sliding window? I'll appreciate any suggestion.

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closed as off-topic by joran, Karl Anderson, Chris, Frank, Paul Hiemstra Oct 28 '13 at 6:45

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1 Answer 1

If M is the input matrix then each row of out is one correlation matrix strung out column by column:

out <- rollapply(M, 600, by = 5, function(x) c(cor(x)), by.column = FALSE)

They could be reshaped into a list of correlation matrices, if need be:

L <- lapply(1:nrow(out), function(i) matrix(out[i, ], ncol(M)))

or as an array:

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