# Row sums over columns with a certain pattern in their name

I have a data.table like this

``````dput(DT)
structure(list(ref = c(3L, 3L, 3L, 3L), nb = 12:15, i1 = c(3.1e-05,
0.044495, 0.82244, 0.322291), i2 = c(0.000183, 0.155732, 0.873416,
0.648545), i3 = c(0.000824, 0.533939, 0.838542, 0.990648), i4 = c(0.044495,
0.82244, 0.322291, 0.393595)), .Names = c("ref", "nb", "i1",
"i2", "i3", "i4"), row.names = c(NA, -4L), class = c("data.table",
"data.frame"), .internal.selfref = <pointer: 0x0000000000320788>)

DT
#    ref nb       i1       i2       i3       i4
# 1:   3 12 0.000031 0.000183 0.000824 0.044495
# 2:   3 13 0.044495 0.155732 0.533939 0.822440
# 3:   3 14 0.822440 0.873416 0.838542 0.322291
# 4:   3 15 0.322291 0.648545 0.990648 0.393595
``````

Now I want to calculate rows sums, but only including columns which start with an "i" ("i1", "i2", etc)

I have used `grep` to create a vector of the column names to be summed:

``````listCol <- colnames(DT)[grep("i", colnames(DT))]
listCol
#  "i1" "i2" "i3" "i4"
``````

Then I have tried to loop over columns:

``````DT\$sum <- rep.int(0, nrow(DT))
for (i in listCol){
DT\$sum = DT\$sum + DT[ , get(i)]
}
``````

...which gives the desired output:

``````DT
#    ref nb       i1       i2       i3       i4      sum
# 1:   3 12 0.000031 0.000183 0.000824 0.044495 0.045533
# 2:   3 13 0.044495 0.155732 0.533939 0.822440 1.556606
# 3:   3 14 0.822440 0.873416 0.838542 0.322291 2.856689
# 4:   3 15 0.322291 0.648545 0.990648 0.393595 2.355079
``````

How can I improve my code?

# Sub question:

This sub-question includes partially the answer to the previous one :

How to avoid this kind of strange notation :

``````myrowMeans = function (x){
rowMeans(x, na.rm = TRUE)
}
DT[ , var := myrowMeans(.SD-myrowMeans(.SD)^2), .SDcols = grep("i", colnames(DT))]
``````

## 3 Answers

You may also try with `Reduce`

`````` DT[, Sum := Reduce(`+`, .SD), .SDcols=listCol][]
#   ref nb       i1       i2       i3       i4      Sum
#1:   3 12 0.000031 0.000183 0.000824 0.044495 0.045533
#2:   3 13 0.044495 0.155732 0.533939 0.822440 1.556606
#3:   3 14 0.822440 0.873416 0.838542 0.322291 2.856689
#4:   3 15 0.322291 0.648545 0.990648 0.393595 2.355079
``````

NOTE: If there are "NA" values, it should be replaced with '0' before `Reduce` i.e.

`````` DT[, Sum := Reduce(`+`, lapply(.SD, function(x) replace(x,
which(is.na(x)), 0))), .SDcols=listCol][]
``````

**Another solution :**using `rowSums`

`````` DT[, Sum := rowSums(.SD, na.rm = TRUE), .SDcols = grep("i", names(DT))]
``````
• D'oh. I'm too slow; just said the same thing. @user235852 The `rowSums` function coerces to matrix before operating, so I suspect this is generally faster. – Frank Mar 26 '15 at 3:15
• @Frank Not sure though. I had seen data.table experts using `rowSums`. One advantage with `rowSums` is the use of `na.rm=TRUE` in case there are NAs. With Reduce, we have to replace NA with `0` before proceeding with `+`. – akrun Mar 26 '15 at 3:17
• I can t express my pleasure to see your answers ( I can t because I need reputation to vote up ) The best way to replace NA by 0 is describe here : stackoverflow.com/questions/7235657/… – user235852 Mar 27 '15 at 19:29
• @user235852 Thanks for the link. Yes, I would also use `set` within the `for` loop for multiple columns. Here, it may be take a few more lines, so if your dataset is not very big, this would work fine. – akrun Mar 28 '15 at 3:34
• @akrun maybe like this? `DT[, Sum := rowSums(.SD, na.rm = T), .SDcols = grep("i", names(DT))]` – Peter Chen Jun 14 '17 at 2:33

Use `.SDcols` to specify the columns, then take `rowSums`. Use `:=` to assign new columns:

``````DT[ ,sum := rowSums(.SD), .SDcols = grep("i", names(DT))]
``````

The `dplyr` solution would be to use `mutate_` together with `paste(listCol, collapse = "+")`. But I guess the `Reduce` solution is faster.

``````DT <- mutate_(DT, sum = paste(listCol, collapse = "+"))
``````