# vectorize this for loop (current row is dependent on row above)

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Suppose I want to create n=3 random walk paths (pathlength = 100) given a pre-generated matrix (100x3) of plus/minus ones. The first path will start at 10, the second at 20, the third at 30:

``` set.seed(123) given.rand.matrix <- replicate(3,sign(rnorm(100))) path <- matrix(NA,101,3) path[1,] = c(10,20,30)```

``` ```

```for (j in 2:101) {   path[j,]<-path[j-1,]+given.rand.matrix[j-1,] } ```

The end values (given the seed and rand matrix) are 14, 6, 34... which is the desired result... but...

Question: Is there a way to vectorize the for loop? The problem is that the path matrix is not yet fully populated when calculating. Thus, replacing the loop with ``` path[2:101,]<-path[1:100,]+given.rand.matrix ``` returns mostly NAs. I just want to know if this type of for loop is avoidable in R.

Thank you very much in advance.

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 similar recent thread – VitoshKa Jan 22 '11 at 21:37

Definitely vectorizable: Skip the initialization of `path`, and use `cumsum` over the matrix:

``````path <- apply( rbind(c(10,20,30),given.rand.matrix), 2, cumsum)

[,1] [,2] [,3]
[1,]   10   20   30
[2,]    9   19   31
[3,]    8   20   32
[4,]    9   19   31
[5,]   10   18   32
[6,]   11   17   31
> tail(path)
[,1] [,2] [,3]
[96,]    15    7   31
[97,]    14    8   32
[98,]    15    9   33
[99,]    16    8   32
[100,]   15    7   33
[101,]   14    6   34
``````
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 Yes. Thank you for the quick reply. Although the actual problem i'm trying to solve is a little bit more complicated than what I posted, your answer has pointed me to the possibility that the answer I'm looking for lies in the apply family of functions. checkmark – morsecode Jan 23 '11 at 1:25 Keep in mind that apply() is not vectorized, but it is prettier than a loop. What really makes Prasad's code fast is the cumsum() function which is vectorized. So use apply(), but be sure and apply vectorized functions in order to be fast. – JD Long Jan 23 '11 at 15:40