I think of this as a two-step process:

subset the original data frame according to the filter supplied
(Believe==FALSE); then

get the row count of this subset

For the first step, the *subset* function is a good way to do this (just an alternative to ordinary index or *bracket* notation).

For the second step, i would use *dim* or *nrow*

One advantage of using *subset*: you don't have to parse the result it returns to get the result you need--just call *nrow* on it directly.

so in your case:

```
v = nrow(subset(Santa, Believe==FALSE)) # 'subset' returns a data.frame
```

or wrapped in an *anonymous function*:

```
>> fnx = function(fac, lev){nrow(subset(Santa, fac==lev))}
>> fnx(Believe, TRUE)
3
```

Aside from *nrow*, *dim* will also do the job. This function returns the *dimensions* of a data frame (rows, cols) so you just need to supply the appropriate index to access the number of rows:

```
v = dim(subset(Santa, Believe==FALSE))[1]
```

An answer to the OP posted before this one shows the use of a contingency table. I don't like that approach for the general problem as recited in the OP. Here's the reason. Granted, the general problem of *how many rows in this data frame have value x in column C?* can be answered using a contingency table as well as using a "filtering" scheme (as in my answer here). If you want row counts for all values for a given factor variable (column) then a contingency table (via calling *table* and passing in the column(s) of interest) is the most sensible solution; however, the OP asks for the count of a *particular* value in a factor variable, not counts across all values. Aside from the performance hit (might be big, might be trivial, just depends on the size of the data frame and the processing pipeline context in which this function resides). And of course once the result from the call to table is returned, you still have to *parse* from that result just the count that you want.

So that's why, to me, this is a filtering rather than a cross-tab problem.