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?

`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