# Count a value in a column in a data frame in R programming

Hi my data looks like below:

``````Product Price Quantity Returns
Fridge  \$260  20       3
Oven    \$150  12       #N/A
Iron    \$100  #N/A     5
Stove   \$150  20       #N/A
``````

I want R to return the number of times "#N/A" appears in the column Returns.

Thanks for the help. I'm new to R and trying to self teach.

-
will this work? df\$[ ,4][df[ ,4] == "#N/A"]<- NA –  vj.vijay Apr 5 '13 at 7:53
add comment

## 3 Answers

``````df\$Returns[df\$Returns == "#N/A"] <- NA
sum(is.na(df\$Returns))
``````

should do the trick. It first checks which values of `df\$Returns` are `NA`. Next we use the fact that in `sum` `TRUE` is interpreted as `1` and `FALSE` as `0` to get the total number of NA's.

-
Why not directly: `sum(df\$Returns == "#N/A")`? –  Arun Apr 4 '13 at 13:22
Also possible, but transforming the `#N/A` is good practice as e.g. plotting routines know how to deal with that. –  Paul Hiemstra Apr 4 '13 at 13:23
+1 for the cleanup step! –  Ricardo Saporta Apr 4 '13 at 13:42
add comment

You can apply `table` to your `Returns` column :

``````table(df\$Returns)
``````

You can then display a specific value this way :

``````tab <- table(df\$Returns)
tab["#N/A"]
``````
-
add comment
``````Returns<- subset(df, df\$Returns=="#N/A")
nrow(Returns)
``````
-
add comment