# If statement in R: Vector of tests and actions

Some sample data:

``````ID        S1Qual    S2Qual    S3Qual    S1        S2        S3
1         1         0         1         7         8         7
2         1         1         1         6         6         8
3         0         1         1         7         8         8
...
``````

S1Qual, S2Qual, and S3Qual denote the quality of S1PS, S2PS, and S3PS, respectively. If `[n, S1Qual] == 1`, I want to keep `[n, S1PS]`; if `[n,S1Qual] == 0`, I want to set `[n,S1PS] == NA`.

I have the following code:

``````n <- 1

while (n <= number.of.rows) {

if (data\$S1Qual[n] == 0) {data\$S1[n] <- NA}
if (data\$S2Qual[n] == 0) {data\$S2[n] <- NA}
if (data\$S3Qual[n] == 0) {data\$S3[n] <- NA}

n <- n+1

}
``````

This does what I wanted, but I was hoping there was a more efficient/concise way (in the real dataframe, there are many more than three of these S/SQual pairs). Searching around has lead me to `ifelse()` and `apply()`, both of which seem close but not quite right for what I want, unless I'm thinking about it wrong.

Any ideas?

-

Use this:

``````cols <- paste0("S", 1:3)
data[,cols][data[,paste0(cols,"Qual")]==0] <- NA
``````

Note: change the vector `1:3` to match your actual number of columns.

-
Looks awesome, but when I try it, I get `Warning message: In `[<-.data.frame`(`*tmp*`, , cols, value = list(c(-18.948082, : provided 2352 variables to replace 6 variables` –  PyNewb Sep 5 '13 at 19:49
@PyNewb you're correct, the `ifelse` approach is misleading. Please consider the other option (now the only option). :-) –  Ferdinand.kraft Sep 5 '13 at 19:54
So, so, so cool. Thanks a million. –  PyNewb Sep 5 '13 at 19:56
Could you explain how the second set of brackets is working? –  PyNewb Sep 5 '13 at 20:09
It's doing what the [data1==0] brackets is doing in the third line of my answer. (Another reason to keep things simple in R.) –  Christopher Poile Sep 5 '13 at 20:30

I find it's easier to understand R code if you keep things simple. And it helps future me who has forgotten everything.

You could make a copy, and do a simple replace on any item that is equal to zero (which is what Ferdinand has done... His is more clever):

``````data1 <- data[,c(2:4)]
data2 <- data[,c(5:7)]
data2[data1==0] <- NA
data[,c(5:7)] <- data2
``````

Edit for explanation:

The first two lines create equal dimension data frames. Because they have the same dimensions you can use the index from `data1` to refer to `data2`.

The magic happens on the third line (technically called filtering). If an element in `data1` is 0, it will return TRUE, otherwise FALSE. The third line says "if an element in `data1` is 0, then return that index from `data2`." Eg, using the example data above, if the element at `data1[1,2]` is zero (it is), then assign NA to `data2[1,2]`.

The last line replaces the old 3x3 submatrix with the new one.

-
Great answer! Wish I could pick two solutions. –  PyNewb Sep 5 '13 at 19:57
Thanks, they're both pretty much the same. :) –  Christopher Poile Sep 5 '13 at 20:03
Thanks for the explanation--helps a ton. Would upvote you if I had enough reputation, hah. –  PyNewb Sep 5 '13 at 21:01
Good explanation. I'm upvoting for PyNewb :-) –  Ferdinand.kraft Sep 5 '13 at 22:08
``````mydata<-mtcars[1:10,1:4]

mydata
mpg cyl  disp  hp
Mazda RX4         21.0   6 160.0 110
Mazda RX4 Wag     21.0   6 160.0 110
Datsun 710        22.8   4 108.0  93
Hornet 4 Drive    21.4   6 258.0 110
Hornet Sportabout 18.7   8 360.0 175
Valiant           18.1   6 225.0 105
Duster 360        14.3   8 360.0 245
Merc 240D         24.4   4 146.7  62
Merc 230          22.8   4 140.8  95
Merc 280          19.2   6 167.6 123

fi<-as.list(names(mydata)[1:2]) # first two columns to be used as base
se<-as.list(names(mydata)[3:4]) # second two columns which will be replaced based on first two cols
kk<-Map(function(x,y) mydata[[y]]<-ifelse(mydata[[x]]>4,1,mydata[[y]]),fi,se) # for your example replace >4 with `==0` and 1 with NA
ll<-t(do.call(rbind,kk))
mydata[,3:4]<-ll
``````

mydata

``````                  mpg cyl disp hp
Mazda RX4         21.0   6    1  1
Mazda RX4 Wag     21.0   6    1  1
Datsun 710        22.8   4    1 93
Hornet 4 Drive    21.4   6    1  1
Hornet Sportabout 18.7   8    1  1
Valiant           18.1   6    1  1
Duster 360        14.3   8    1  1
Merc 240D         24.4   4    1 62
Merc 230          22.8   4    1 95
Merc 280          19.2   6    1  1
``````

``````fi<-as.list(names(mydata)[1:3]) # first three columns to be used as base