# Rolling Standard Deviation in a Matrix in R

Bellow is a stock daily returns matrix example (ret_matriz)

``````      IBOV        PETR4        VALE5        ITUB4        BBDC4        PETR3
[1,] -0.040630825 -0.027795652 -0.052643733 -0.053488685 -0.048455772 -0.061668282
[2,] -0.030463489 -0.031010237 -0.047439725 -0.040229625 -0.030552275 -0.010409016
[3,] -0.022668170 -0.027012078 -0.022668170 -0.050372843 -0.080732363  0.005218051
[4,] -0.057468428 -0.074922051 -0.068414670 -0.044130126 -0.069032911 -0.057468428
[5,]  0.011897277 -0.004705891  0.035489885 -0.005934736 -0.006024115 -0.055017693
[6,]  0.020190656  0.038339130  0.009715552  0.014771317  0.023881732  0.011714308
[7,] -0.007047191  0.004529286  0.004135085  0.017442303 -0.005917177 -0.007047191
[8,] -0.022650593 -0.029481336 -0.019445057 -0.017442303 -0.011940440 -0.046076458
[9,]  0.033137223  0.035274722  0.038519205  0.060452104  0.017857617  0.046076458
``````

For example purposes consider a 5 day moving window, i want as a result a new matrix as described bellow :

``````     IBOV        PETR4    ...
[1,] 0           0        ...
[2,] 0           0        ...
[3,] 0           0        ...
[4,] 0           0        ...
[5,] sd[1:5,1]  sd[1:5,2] ...
[6,] sd[2:6,1]  sd[2:6,2] ...
[7,] sd[3:7,1]  sd[3:7,2] ...
[8,] sd[4:8,1]  sd[4:8,2] ...
[9,] sd[5:9,1]  sd[5:9,2] ...
``````

Using the zoo package i was able to reach the result but it is a little bit slow, any ideias on how to improve the speed to reach the same result ?

zoo code bellow :

``````require(zoo)

apply(ret_matriz, 2, function(x) rollapply(x, width = 5, FUN = sd, fill = 0, align = 'r'))
``````
-
No need to use `apply`, I think `rollapply(df, width=5, FUN=sd, fill=0, align="r")` is enough if `by.column = TRUE` (default value) –  Jilber Jun 5 '14 at 17:10
How big is your data? –  Mike.Gahan Jun 5 '14 at 19:00
4062 observations of 143 variables –  RiskTech Jun 5 '14 at 21:39

1) The `apply` part can be eliminated. We also use `rollapplyr` for brevity:

``````rollapplyr(ret_matriz, 5, sd, fill = 0)
``````

2) Also `rollmean` is faster than `rollapply` so we could construct it from that using the formula `sd = sqrt(n/(n-1) * (mean(x^2) - mean(x)^2))`:

``````sqrt((5/4) * (rollmeanr(ret_matriz^2, 5, fill = 0) -
rollmeanr(ret_matriz, 5, fill = 0)^2))
``````
-

You can use `TTR::runSD` instead.

``````library(quantmod)
getSymbols("SPY")
spy <- apply(ROC(SPY), 2, runSD, n=5)