# conditional selection of items from tables inside R list object

I have an R list containing a series of tables. Each table in the list contains named items and their corresponding values. I want to iterate over each table of the list and return a count of how many of the items in each of the tables have a value == 1.

Assume, for example, the following list:

someitems <- c("the", "cat", "and", "the", "hat")

someotheritems <- c("it", "was", "the", "best", "of", "times", "it", "was", "the")

my.list <- list(table(someitems), table(someotheritems))

my.list

``````[[1]]
someitems
and cat hat the
1   1   1   2

[[2]]
someotheritems
best    it    of   the times   was
1     2     1     2     1     2
``````

I need now to return a count of the items in each table of the list that have a value == 1,

e.g. from the above return

``````3
3
``````

I can see, how to do this by looping, but how to do it without loops?

I've experimented with lapply() and I know how to get at the values using:

``````lapply(my.list, '[')
``````

and I have written a custom function for detecting items == 1. e.g.

``````is.one <- function(x) if(x==1) return (TRUE) else return(FALSE)
``````

but I'm not quite getting how to combine the two, and there ought to be an easier way than using this silly function.

Thanks!

-

In learning how to do this, it is helpful to work with a single instance and then use `lapply` on an anonymous function that generalizes the method:

``````> my.list[[1]] == 1
someitems
and   cat   hat   the
TRUE  TRUE  TRUE FALSE
> sum(my.list[[1]] == 1)
[1] 3
> lapply(my.list, function(x) sum(x == 1)  )
[[1]]
[1] 3

[[2]]
[1] 3
``````

If you are expecting the result to be regular then `sapply` can sometimes reduce the returned value to a vector or matrix:

``````sapply(my.list, function(x) sum(x == 1) )
[1] 3 3
``````
-
I knew it must be simpler than I was making it. Thanks! –  litlogger Jan 29 '12 at 18:03
``````library(plyr)
count=ldply(my.list, function(x) length(which(x==1)))
``````
-