# rollapply with function rle(x)

I have time series data as data.table class and each column (observation points) has values that I want to count them within sliding window (30 width). I tried to use rle(sort(x)) to count each values within rollapply but it's not working.

for example if I have table like below,

``````dt <- data.frame(v1=c(1,0,1,4,4,4,4,4),v2=c(1,1,1,4,3,3,3,3),
v3=c(0,1,1,3,3,3,3,2),v4=c(1,1,0,3,3,3,3,3),
v5=c(1,1,1,5,5,5,5,5))
``````

I tried like this;

``````rollapply(dt, 3, function(x) {rle(sort(x))\$values; rle(sort(x))\$length})
``````

but the result is just doesn't make sense. please give me some direction...

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I don't see any `data.table`'s above. But more importantly it's unclear what you want - please provide desired output. –  eddi Jan 24 '14 at 17:03
sorry for not clear question. the desired output was for each sliding window i wanted to have sorted value with number of appearance (count). I can make my dt into dt1<-data.table(dt) –  kclick Jan 24 '14 at 19:22

Solution 1 Assuming the objective is to get rolling counts of 3 values try the following:

``````m <- as.matrix(dt)
levs <- sort(unique(c(m)))
f <- function(x) table(factor(x, levs))
r <- rollapply(m, 3, f)
``````

Here `levs` is 0, 1, ..., 5 so for each application of the function we will get out a vector 6 long witih a count of the 0's, 1's, ..., 5's. There are 5 input columns so applying such a function to each column gives 5 * 6 = 30 columns of output.

Note that `rollapply` works with matrices or zoo objects, not data frames, so we converted it. Also to ensure that each function application outputs a vector of the same length we convert each input to a factor with the same levels.

Note that:

``````ra <- array(r, c(6, 6, 5))
``````

gives a 3d array in which ra[,,i] is the matrix formed by `rollapply(dt[, i], 3, f)`. That is, in the matrix `ra[,,i]` there is a row for each application of `f` on column i and the columns in that row count the number of 0's, 1's, ..., 5's.

Another possibility is this which gives the same 5 matrices (one per input column) as components of the resulting list:

``````lapply(dt, rollapply, 3, f)
``````

For example, consider the following. Row 1 of the output says that the first application of f on `dt[,1]` has one 0, two 1s and no other values. This can also be obtained from `r[,,1]` or from `lapply(dt, rollapply, 3, f)[[1]]` :

``````> rollapply(dt[, 1], 3, f)
0 1 2 3 4 5
[1,] 1 2 0 0 0 0  <- dt[1:3,1] has 1 zero and 2 ones
[2,] 1 1 0 0 1 0  <- dt[2:4,1] has 1 zero and 1 one and 1 four, etc.
[3,] 0 1 0 0 2 0
[4,] 0 0 0 0 3 0
[5,] 0 0 0 0 3 0
[6,] 0 0 0 0 3 0
``````

Solution 2

This says looking at cell 1,1 of the output that the there is one 0 and two 1s in `dt[1:3,1]`. Looking at cell 2,1 of the output we see that there is one 0, one 1 and 1 four in `dt[2:4,1]`, etc.

``````> g <- function(x) { tab <- table(x); toString(paste(names(tab), tab, sep = ":")) }
> sapply(dt, rollapply, 3, g) # or rollapply(m, 3, g) where m was defined in solution 1
v1              v2              v3         v4              v5
[1,] "0:1, 1:2"      "1:3"           "0:1, 1:2" "0:1, 1:2"      "1:3"
[2,] "0:1, 1:1, 4:1" "1:2, 4:1"      "1:2, 3:1" "0:1, 1:1, 3:1" "1:2, 5:1"
[3,] "1:1, 4:2"      "1:1, 3:1, 4:1" "1:1, 3:2" "0:1, 3:2"      "1:1, 5:2"
[4,] "4:3"           "3:2, 4:1"      "3:3"      "3:3"           "5:3"
[5,] "4:3"           "3:3"           "3:3"      "3:3"           "5:3"
[6,] "4:3"           "3:3"           "2:1, 3:2" "3:3"           "5:3"
``````

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Thank you for the answer. but it's really hard to interpret the result. what I really want to get is - if I just use above dt data using 5 width sliding window. For v1 column for first sliding window,1's have 2counts,0's 1, 4's 2, in second sliding window, 1's 1, 0's 1, 4's 3 counts. etc. So when I simply run rle(sort(x)) x as simple vector, you get the result sorted values with total counts. That's what I want to have in my sliding window but... I don't know why the rle function is not nicely applied within rollapply function –  kclick Jan 24 '14 at 16:05
The problem with the code in the question is that the function given to `rollapply` returns outputs of different lengths depending on the input values so it can't make the result into a rectangle. I have added additional discussion and a second solution. –  G. Grothendieck Jan 24 '14 at 16:36
it's was extremely helpful. I will try to digest all and let you know if I have some more question regarding your approach. –  kclick Jan 24 '14 at 17:35
lapply idea is great.. –  kclick Jan 24 '14 at 19:01
Again, thanks for the help. Can I also add some code to extract the values & their max count in each sliding window? –  kclick Jan 25 '14 at 0:46

So if I am clear what you want to do is simply count how many times the values in v1..v5 are the same? If so you can do it using the following:

``````dt <- data.frame(v1=c(1,0,1,4,4,4,4,4),v2=c(1,1,1,4,3,3,3,3),
v3=c(0,1,1,3,3,3,3,2),v4=c(1,1,0,3,3,3,3,3),
v5=c(1,1,1,5,5,5,5,5))
a <- list()
b <- list()
i <- 1
while (i <= length(dt[1,]))
{
a[i] <-  list(rle(sort(dt[,i]))\$lengths)
b[i] <- list(rle(sort(dt[,i]))\$values)
i <- i + 1
}
``````
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