# Apply any over rows

In R the any-Function is applied over columns that the result is boolean. What is the best way, to apply it row by row? My target in this case is to do a recode for A, if any of A, B or C is 1 or 6. (If TRUE TEST\$NEW should be 101)

Here my DataFrame:

``````  A B C D
1 1 1 "A"
2 1 2 "B"
3 6 3 "C"
5 3 5 "D"
``````

It could be done in this way, but there should be a smarter solution:

``````TEST\$NEW <- ifelse(TEST\$A == 1 | TEST\$B == 1 | TEST\$C == 1 | TEST\$A == 6 | TEST\$B == 6 | TEST\$C == 6, 101, NA)
``````
-

``````TEST\$NEW <- ifelse(apply(TEST,1,function(x) any(x==1|x==6)),101,NA)
``````
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thats what I m looking for! Thanks! –  Diegoal Feb 12 '13 at 11:07
+1 concise and clear ! –  juba Feb 12 '13 at 12:52

One way to do it, but there may be a simpler one :

``````df <- read.table(textConnection('A B C D
1 1 1 "A"
2 1 2 "B"
3 6 3 "C"

test <- rowSums(sapply(df[,c("A","B","C")], function(v) v %in% c(1,6)))
df\$TEST <- ifelse(test>0, 101, NA)
``````

Which gives :

``````  A B C D TEST
1 1 1 1 A  101
2 2 1 2 B  101
3 3 6 3 C  101
4 5 3 5 D   NA
``````
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Thank you! You re rigth, this would work. –  Diegoal Feb 12 '13 at 11:00
What I m looking for is a function that works similar to SPSS. There you have the syntax any(A, 1, 6) | any(B, 1, 6) .... –  Diegoal Feb 12 '13 at 11:02

Another approach:

``````TEST\$NEW <- 101 * apply(TEST, 1, function(x) any(x %in% c(1, 6))) ^ NA

A B C D NEW
1 1 1 1 A 101
2 2 1 2 B 101
3 3 6 3 C 101
4 5 3 5 D  NA
``````
-
Interesting; a priori I would have expected that `TRUE^NA` and `FALSE^NA` would both be defined as `NA` or would both be equal to themselves (especially given that a power of a logical only seems to make sense for non-negative integers), but given `c(1,0)^NA == c(1,NA)` it's clear enough where that's coming from. –  Glen_b Feb 12 '13 at 21:50