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I have a dataframe with columns A and B as shown below. I would like to calculate the mean of the values in column B in a sliding window. The sliding window size is not constant and should be set based on column A. i.e. the window size is set for a value limit of 200 in column A. Below example gives a clear description of the window size:

A:        10   150    200   220    300    350    400    410    500                                          
B:         0     0      0     1     0      1     1      1       0               mean                 
          [0     0    0]                                                        0
                 [0     0     1     0      1]                                   0.4
                        [0    1     0      1      1]                            0.6
                              [1    0      1      1     1]                      0.8
                                    [0     1     1      1      0]               0.6
                                           [1     1      1     0]               0.75
                                                  [1     1     0]               0.66
                                                        [1     0]               0.5
                                                               [0]              0


 Output:      0    0.4    0.6  0.8   0.8    0.8    0.8   0.8  0.75 

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 wish to have the output as shown above. The output should like:

A                    B                  Output   
10                   0                      0  
150                  0                      0.4
200                  0                      0.6
220                  1                      0.8
300                  0                      0.8
350                  1                      0.8
400                  1                      0.8
410                  1                      0.8
500                  0                      0.75

there is a similar question at Sliding window in R and

rollapply(B, 2*k-1, function(x) max(rollmean(x, k)), partial = TRUE)

gives the solution with k as the window size. The difference is the window size which is not constant in the current question.

Could someone be able to provide any solution in R?

share|improve this question
    
It really isn't obvious how the values of A determine which values of B that you want to take the mean of. For example, the first value of A is 10, but you calculate the mean of 3 values. Please provide a variable that we can use (maybe created with dput(your_data)). –  Richie Cotton Oct 18 '13 at 14:18
    
The window limit is 200 in column A. since the 3rd value in column A reaches 200 the values in this window are the first 3 values in B i.e. [0 0 0]. If we slide now by one position to 150, now the window size will be until the value in A reaches 150+200=350. so values in second window are [0 0 1 0 1]. Likewise the window size and the values in the windows are selected. –  user1779730 Oct 18 '13 at 14:31

3 Answers 3

Data in a reproducible form:

data <- data.frame(
  A = c(10, 150, 200, 220, 300, 350, 400, 410, 500) , 
  B = c(0, 0, 0, 1, 0, 1, 1, 1, 0)  
)

window_size <- 200

Just use vapply or sapply to loop over the values of A, and calculate the mean of an approriate subset of B.

data$Output <- with(
  data,
  vapply(
    A, 
    function(x) 
    {
      index <- x <= A & A <= x + window_size
      mean(B[index])
    },
    numeric(1)
  )
)
share|improve this answer

Try this:

a=c(10,150,200,250,300,350,400)
b=c(0,0,0,1,1,1,0)

mean=rep(0,length(a))
window=200
for(i in 1:length(a)){
    vals=which(a>=a[i] & a<=a[i]+window)
    mean[i]=sum(b[vals])/length(vals)
}
share|improve this answer

This seems to work:

#data
DF <- data.frame(A = c(10, 150, 200, 220, 300, 350, 400, 410, 500),
                 B = c(0, 0, 0, 1, 0, 1, 1, 1, 0))

#size of the different windows
rolls <- findInterval(DF$A + 200, DF$A)

#find the mean for every interval
fun <- function(from, to) { mean(DF$B[from:to]) } 
means <- mapply(fun, 1:nrow(DF), rolls)

#in which windows is every value of DF$A
fun2 <- function(x, from, to) { x %in% from:to } 

output <- rep(NA, nrow(DF))
for(i in 1:nrow(DF))
 {
  output[i] <- max(means[mapply(fun2, i, 1:nrow(DF), rolls)])
 }

DF$output <- output

>  DF
    A B output
1  10 0   0.00
2 150 0   0.40
3 200 0   0.60
4 220 1   0.80
5 300 0   0.80
6 350 1   0.80
7 400 1   0.80
8 410 1   0.80
9 500 0   0.75
share|improve this answer

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