# sumif function in R of two matrices

I have two matrices with timeseries data

``````A
2 1 0
0 1 6
1 4 6

B
1 1 3
4 2 8
2 5 1
``````

I want to create a vector comparing A and B and satisfying the following criteria:

if B<3, then sum the elements of A by row that follow the criteria
So my result matrix should be

``````C
3 (=2+1)
1
7 (=1+6)
``````

I have tried to do it the following way but I was not able to get the proper results

``````posneg_fun<-function(x,y)
{
new<-sum(x[y<3])
return(new)
}

out<-t(apply(x,1,FUN=posneg_fun,y))
``````

any ideas?

thank you

-
if you feel the answer posted below solves your problem, you should consider clicking the check-mark to accept it ... –  Ben Bolker Jun 23 '13 at 17:07
just did! thank you for letting me know, i was not aware –  user2493820 Jun 24 '13 at 14:41

``````A[B>=3] <- NA
rowSums(A,na.rm=TRUE)
## [1] 3 1 7
``````

or @Roland's suggestion (even shorter):

``````rowSums(A*(B<3))
``````

which takes advantage of the fact that `TRUE` gets coerced to 1 and `FALSE` gets coerced to 0 when doing numerical operations ...

-
or `rowSums(A*(B<3))` –  Roland Jun 17 '13 at 15:12
that's great! thank you very much for the prompt response! –  user2493820 Jun 17 '13 at 15:47