# Sliding window using R [closed]

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 HiemstraOct 28 '13 at 6:45

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If this question can be reworded to fit the rules in the help center, please edit the question.

Welcome to Stack Overflow. Please read Stack Overflow question checklist and What topics can I ask about here? before posting. Questions asking for code should show some effort ("attempted solutions, why they didn't work, and the expected results") otherwise your question will downvoted and closed as off-topic. – zero323 Oct 28 '13 at 3:20

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

``````library(zoo)
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:

``````simplify2array(L)
``````
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