# R: Count items in a nested list

How do you efficiently count items in a nested list? For example, I have a list of header names such as:

``````header.names <- list(list("Post Unique Reference", "Name", "Grade (or equivalent)", "Job Title", "Date", "Date"),
list("Name", "Organisation", "Unit", "Reporting Senior Post", "Grade", "Date"))
``````

I'd like to calculate statistics of how many times a header occurs.

A simple approach could be

``````require(stringr)
``````

However:

• Counting "Name" should yield 2.
• Counting "Date" should also yield 2 because each list counts once.
• Counting "Grade" should yield 1 - how would a non-exact search look like so it yields 2?
-
`table(unlist(lapply(header.names, unique)))` –  Zbynek Feb 17 at 12:50

To expand on Zbynek's point:

Since duplicates within each element of the list should be ignored, you need to loop over the list taking unique values .

``````unique_headers <- lapply(header.names, unique)
``````

To deal with everything at once, it is easiest to flatten the list, so you can use a vectorised solution. Since you don't care about the names of the elements, you can get a modest performance boost by passing `use.names = FALSE`.

``````flat_headers <- unlist(unique_headers, use.names = FALSE)
``````

Finally you want to count the elements in the list. Depending upon what output format works best for you, you have a choice of `table` or `count` from `plyr`.

``````table(flat_headers)

library(plyr)
is there a way to sort `count(flat_headers)` in descending order? –  Rico Feb 18 at 16:23
The easiest wy to sort a data frame is with `arrange` in the `plyr` package. Try `counts <- count(flat_headers); arrange(count, desc(freq))` –  Richie Cotton Feb 19 at 10:43