R function similar to Excel's index-match

I'm sure there is a fairly straight forward solution to my problem. However, my limited R-skills let me down and I didn't come across a suitable solution yet.

I have a matrix A looking like:

``````     Year SIC       alpha
[1,] 1990  13 -0.08610973
[2,] 1990  15 -0.02270707
[3,] 1990  20  0.01273243
[4,] 1990  25 -0.25173402
[5,] 1991  26 -0.02625965
[6,] 1991  27 -0.02685330
....
``````

And a matrix B which looks like

``````      46   27   13   37   20   ...
1989  NA   NA   NA   NA   NA
1990  NA   NA   NA   NA   NA
1991  NA   NA   NA   NA   NA
``````

I'd like to perform a kind of two-dimensional lookup. I want to paste the values from matrix A's column "alpha" into matrix B, where the row names of B match `A\$Year` and the column names of B match `A\$SIC`. So basically similar to Excel's Index-match-functions.

The result would look like this:

``````      46   27             13           37   20   ...
1989  NA   NA             NA           NA   NA
1990  NA   NA            -0.08610973   NA   0.01273243
1991  NA   -0.02685330    NA           NA   NA
``````

I hope anyone can help me out.

-
It would help if you made your example reproducible; for example, providing small examples of the two matrices using `dput()`. –  joran May 22 '14 at 15:41
Thanks! I will keep in mind for next time. Roland's solution worked fine –  user3665702 May 23 '14 at 7:15

``````#reproduce data
1990  13 -0.08610973
1990  15 -0.02270707
1990  20  0.01273243
1990  25 -0.25173402
1991  26 -0.02625965

B <- read.table(text="      46   27   13   37   20
1989  NA   NA   NA   NA   NA
1990  NA   NA   NA   NA   NA
1991  NA   NA   NA   NA   NA", header=TRUE, check.names=FALSE)

A <- as.matrix(A)
B <- as.matrix(B)

#reshape to long format
Bm <- stack(as.data.frame(B))
Bm\$ind <- as.character(Bm\$ind)
Bm\$year <- rownames(B)

#merge
C <- merge(Bm[, c("ind", "year")],
as.data.frame(A),
by.x=c("ind", "year"),
by.y=c("SIC", "Year"),
all.x=TRUE)

#reshape to wide format
library(reshape2)
dcast(C, year~ind)

#  year          13         20         27 37 46
#1 1989          NA         NA         NA NA NA
#2 1990 -0.08610973 0.01273243         NA NA NA
#3 1991          NA         NA -0.0268533 NA NA
``````
-
Thanks a lot. That helped! –  user3665702 May 23 '14 at 7:15