# Sliding window in R

I have a dataframe DF, with two columns A and B shown below:

``````A                    B
1                    0
3                    0
4                    0
2                    1
6                    0
4                    1
7                    1
8                    1
1                    0
``````

A sliding window approach is performed as shown below. The mean is calulated for column B in a sliding window of size 3 sliding by 1 using: rollapply(DF\$B, width=3,by=1). The mean values for each window are shown on the left side.

``````    A:         1    3    4    2    6    4    7    8    1
B:         0    0    0    1    0    1    1    1    0
[0    0    0]                                              0
[0    0    1]                                        0.33
[0    1    0]                                  0.33
[1    0    1]                            0.66
[0    1    1]                      0.66
[1    1    1]                1
[1    1    0]           0.66
output:        0   0.33 0.33 0.66   0.66    1     1    1   0.66
``````

Now, for each row/coordinate in column A, all windows containing the coordinate are considered and should retain the highest mean value which gives the results as shown in column 'output'.

I need to obtain the output as shown above. The output should like:

``````A                   B                  Output
1                   0                      0
3                   0                      0.33
4                   0                      0.33
2                   1                      0.66
6                   0                      0.66
4                   1                      1
7                   1                      1
8                   1                      1
1                   0                    0.66
``````

Any help in R?

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(+1) Now I understand the question. Let me try to see if I can figure something out. Just one more thing. I think you lost the final output "mean_A" in this edit. Could you add it as well? Thanks. –  Arun Apr 11 '13 at 11:09
@Arun Now i have added Mean_A. –  user1779730 Apr 11 '13 at 11:27
is `A` always a sequence 1:N? I don't see how the values in `A` matter to your calculation. It's pretty much `rollmax(rollmean(B,3),3)` so far as I understand it. –  Carl Witthoft Apr 11 '13 at 11:39
@CarlWitthoft, not quite. user1779730, check my answer. –  Arun Apr 11 '13 at 12:02
@CarlWitthoft, Hope the reframed question help to understand the problem –  user1779730 Apr 11 '13 at 13:03
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## 2 Answers

Try this:

``````# form input data
library(zoo)
B <- c(0, 0, 0, 1, 0, 1, 1, 1, 0)

# calculate
k <- 3
rollapply(B, 2*k-1, function(x) max(rollmean(x, k)), partial = TRUE)
``````

The last line returns:

``````[1] 0.0000000 0.3333333 0.3333333 0.6666667 0.6666667 1.0000000 1.0000000
[8] 1.0000000 0.6666667
``````

If there are `NA` values you might want to try this:

``````k <- 3
B <- c(1, 0, 1, 0, NA, 1)
rollapply(B, 2*k-1, function(x) max(rollapply(x, k, mean, na.rm = TRUE)), partial = TRUE)
``````

where the last line gives this:

``````[1] 0.6666667 0.6666667 0.6666667 0.5000000 0.5000000 0.5000000
``````

Expanding it out these are formed as:

``````c(mean(B[1:3], na.rm = TRUE), ##
max(mean(B[1:3], na.rm = TRUE), mean(B[2:4], na.rm = TRUE)), ##
max(mean(B[1:3], na.rm = TRUE), mean(B[2:4], na.rm = TRUE), mean(B[3:5], na.rm = TRUE)),
max(mean(B[2:4], na.rm = TRUE), mean(B[3:5], na.rm = TRUE), mean(B[4:6], na.rm = TRUE)),
max(mean(B[3:5], na.rm = TRUE), mean(B[4:6], na.rm = TRUE)), ##
mean(B[4:6], na.rm = TRUE)) ##
``````

If you don't want the `k-1` components at each end (marked with `##` above) drop `partial = TRUE`.

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There -- I knew someone would formulate my comment above correctly :-) –  Carl Witthoft Apr 11 '13 at 15:10
@G.Grothendieck Thanks. What is 5 in the rollapply function? –  user1779730 Apr 11 '13 at 16:12
@G.Grothendieck Based on what approximation the width is set to 5? This is just a sample data. Real data has a window size of 5000 that slides by 1.In this case how would we determine the width of the window? –  user1779730 Apr 11 '13 at 16:34
@G.Grothendieck thanks a lot for very simple and effective solution. Now it seems we can simulate for any width. One more query, I initially used rollapply(DF\$B, width=3,by=1) to calculate the mean of window size 3 sliding by=1 position. But in your solution, there is nothing about the sliding by='' parameter. Can i assume it calculates the mean in the same manner sliding by 1 position? –  user1779730 Apr 11 '13 at 16:46
@G.Grothendieck Many Thanks!!! –  user1779730 Apr 11 '13 at 16:52
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The R library TTR has a number of functions for calculating averages over sliding windows

SMA = simple moving average

``````data\$sma <- SMA(data\$B, 3)
``````

More documentation is here http://cran.r-project.org/web/packages/TTR/TTR.pdf

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