# Computing deviation from mean for each row

Using the following code, I wrote a function to that gives me the average of the values in each row (1). Now I would like to compute the deviation of each value (i,j) in row i from the mean calculated in row i (using a function). I wrote a function (2) to below but it doesn't seem to be working. Can someone please help?

``````(1) n=28
k=4

Avg  <- function (n,k) {
for (i in 1:28) {
}
}
``````

where

``````Z is:
> Z
V1       V2       V3       V4
[1,] 77.81146 80.37801 72.33208 77.73541
[2,] 70.38343 62.33750 67.74083 71.18287
[3,] 69.03035 74.43367 77.87572 77.89755
[4,] 83.05206 83.07390 71.76214 80.16890
[5,] 70.61465 60.07529 59.31726 69.93781
[6,] 72.22979 59.44618 74.65016 68.75547
[7,] 75.28208 79.15410 81.72065 73.67472
[8,] 94.78838 88.89368 73.35592 84.79245
[9,] 78.00313 66.96430 78.79857 95.90012
[10,] 66.70869 81.91267 76.01797 60.48021
[11,] 69.98514 54.44738 65.88391 64.10529
[12,] 80.21977 78.44115 74.95861 78.83063
[13,] 87.17776 76.04111 77.99261 74.81652
[14,] 75.67206 68.03770 56.90106 58.85256
[15,] 68.63858 79.25913 75.31810 82.69422
[16,] 65.40212 77.23639 94.33794 86.70359
[17,] 66.59640 75.00316 63.96433 75.79860
[18,] 65.77463 73.59685 63.05748 62.29946
[19,] 78.46871 77.71069 88.33124 84.39021
[20,] 71.37807 78.75419 65.97058 81.17457
[21,] 72.17469 75.61673 75.63857 64.32681
[22,] 65.97012 62.48757 66.35959 68.92614
[23,] 86.51898 82.57795 89.95407 77.17046
[24,] 77.95162 79.90312 76.72703 84.54925
[25,] 83.10545 79.92936 87.75158 77.21221
[26,] 69.64127 81.07779 79.29918 75.81663
[27,] 81.02364 69.71188 78.11864 67.07981
[28,] 71.42319 88.52474 80.89039 69.75374

(2)     Deviation= function (n,k){
for(i in 1:28){
}
}
{
for (j in 1:4) {
}
return(dev)
}
``````
-
What language ? –  Paul R Mar 1 '13 at 7:39
I gather it's R. –  minopret Mar 1 '13 at 7:43
@Titi90 have you consider accepting answers? you have asked 9 questions and you've never accepted one. That's not a good behavior. –  Jilber Nov 17 '13 at 12:49

You don't need to make your own functions. Just calculate row means with function `rowMeans()` and use those values to get deviation from those means.

``````Z<-matrix(sample(1:40),ncol=4)
Z
[,1] [,2] [,3] [,4]
[1,]   32   19   35    4
[2,]   11   31   33   38
[3,]   15   29    2    8
[4,]   18   34    5    3
[5,]   21   24   39   10
[6,]    9   16   27   30
[7,]   20    1   37   17
[8,]   22   23   25   40
[9,]   12    7   26    6
[10,]   13   28   36   14

rowMeans(Z)
[1] 22.50 28.25 13.50 15.00 23.50 20.50 18.75 27.50 12.75 22.75

Z-rowMeans(Z)
[,1]   [,2]   [,3]   [,4]
[1,]   9.50  -3.50  12.50 -18.50
[2,] -17.25   2.75   4.75   9.75
[3,]   1.50  15.50 -11.50  -5.50
[4,]   3.00  19.00 -10.00 -12.00
[5,]  -2.50   0.50  15.50 -13.50
[6,] -11.50  -4.50   6.50   9.50
[7,]   1.25 -17.75  18.25  -1.75
[8,]  -5.50  -4.50  -2.50  12.50
[9,]  -0.75  -5.75  13.25  -6.75
[10,]  -9.75   5.25  13.25  -8.75
``````
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Thanks but what if I wanted to write it as a function, how would I go about it? –  Titi90 Mar 1 '13 at 14:12

You can use `scale` to get column deviations (since it performs centring), so just use this on the transpose, and transpose again to get your desired output:

``````x <- matrix(sample(1:12),4)
x
[,1] [,2] [,3]
[1,]    6    4    1
[2,]   12    3    7
[3,]    9   10   11
[4,]    2    5    8
t(scale(t(x),scale=F))
[,1]       [,2]       [,3]
[1,]  2.333333  0.3333333 -2.6666667
[2,]  4.666667 -4.3333333 -0.3333333
[3,] -1.000000  0.0000000  1.0000000
[4,] -3.000000  0.0000000  3.0000000
attr(,"scaled:center")
[1]  3.666667  7.333333 10.000000  5.000000
``````

The centre attribute gives the row means.

-

You can use `sweep` and `rowMeans` as in:

``````> set.seed(1) # for the sample to be reproducible
> x <- matrix(sample(1:12),4)
> sweep(x, 1, rowMeans(x))
[,1]      [,2]      [,3]
[1,]  1.0000000 -1.000000  0.000000
[2,]  0.6666667  2.666667 -3.333333
[3,] -3.0000000  1.000000  2.000000
[4,] -0.6666667  2.333333 -1.666667
``````

See `?sweep` for further details.

-

You could think about your loop in a more "R like" way using apply.

``````( Z <- data.frame(V1=runif(28,0,100), V2=runif(28,0,100),
V3=runif(28,0,100), V4=runif(28,0,100)) )

( Z.dev <- Z - apply(Z, MARGIN=1, FUN=mean) )
``````
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