# Different hard threshold for each column

I would like to hard threshold my matrix such that all values below a certain number are set to zero. However, I would like that threshold to vary by the column (i.e. each column has its own threshold). How can I do this in R?

Here is the simple set up:

``````set.seed(1)
A <- matrix(runif(n = 12),nrow = 4)
#    [,1]       [,2]      [,3]
#[1,] 0.2655087 0.2016819 0.62911404
#[2,] 0.3721239 0.8983897 0.06178627
#[3,] 0.5728534 0.9446753 0.20597457
#[4,] 0.9082078 0.6607978 0.17655675

threshholds <- c(0.3,1,0.5)

#wanted result:

#    [,1]       [,2]      [,3]
#[1,] 0         0         0.62911404
#[2,] 0.3721239 0         0
#[3,] 0.5728534 0         0
#[4,] 0.9082078 0         0
``````

I need to apply it to large matrices, so efficiency is relevant.

Edit: Having received several excellent suggestions, I compared their speed for future reference:

``````set.seed(1)
A <- matrix(runif(n = 1E4*2E3),nrow = 2E3)

threshholds <- runif(n=1E4)

> system.time(A * (A > threshholds[col(A)]))# akrun
user  system elapsed
0.394   0.124   0.519
> system.time(replace(A, A <= threshholds[col(A)], 0)) # akrun
user  system elapsed
0.465   0.138   0.604
> system.time(pmin(A, A > threshholds[col(A)])) #akrun
user  system elapsed
0.678   0.290   1.024
> system.time(A[t(apply(A, 1, `<`, threshholds))] <- 0) #Andrew Gustar
user  system elapsed
0.875   0.306   1.200
> system.time(At <- apply(A, 1, applythresh)) + system.time(t(At)) #Chris Litter
user  system elapsed
0.891   0.372   1.286
> system.time(sweep(A, 2, threshholds, function(a,b) {ifelse(a<b,0,a)})) #MrFlick
user  system elapsed
1.752   0.598   2.354
``````

Here is a vectorized option

``````replace(A, A <= threshholds[col(A)], 0)
``````

Or with some arithmetic

``````A * (A > threshholds[col(A)])
#       [,1] [,2]     [,3]
#[1,] 0.0000000    0 0.629114
#[2,] 0.3721239    0 0.000000
#[3,] 0.5728534    0 0.000000
#[4,] 0.9082078    0 0.000000
``````

Or with `pmin`

``````pmin(A, A > threshholds[col(A)])
#         [,1] [,2]     [,3]
#[1,] 0.0000000    0 0.629114
#[2,] 0.3721239    0 0.000000
#[3,] 0.5728534    0 0.000000
#[4,] 0.9082078    0 0.000000
``````

You can use the `sweep` command for this. For example

``````threshholds <- c(0.3,1,0.5)
sweep(A, 2, threshholds, function(a,b) {ifelse(a<b,0,a)})
#          [,1] [,2]     [,3]
# [1,] 0.0000000    0 0.629114
# [2,] 0.3721239    0 0.000000
# [3,] 0.5728534    0 0.000000
# [4,] 0.9082078    0 0.000000
``````

Here we apply our function to each of the different columns using a different threshold for each column.

Let me know how this fairs over your full matrix. Though having seen somebody has a built in function solution, I may be too slow.

``````applythresh <- function(x){
x <- x * (x >= threshholds)
}
At <- apply(A, 1, applythresh)
t(At)
``````

Here is another approach...

``````A[t(apply(A, 1, `<`, threshholds))] <- 0

A
[,1] [,2]     [,3]
[1,] 0.0000000    0 0.629114
[2,] 0.3721239    0 0.000000
[3,] 0.5728534    0 0.000000
[4,] 0.9082078    0 0.000000
``````