# How to find the percentage of NAs in a data.frame?

I am trying to find the percentage of NAs in columns as well as inside the whole dataframe:

The first method which I have commented gives me zero and the second method which is not commented gives me a matrix. Not sure what I am missing. Any hint is truly appreciated!

``````cp.2006<-read.csv(file="cp2006.csv",head=TRUE)

#countNAs <- function(x) {
#  sum(is.na(x))
#}
#total=0
#for (i in col(cp.2006)) {
#  total=countNAs(i)+total
#}
#print(total)
count<-apply(cp.2006, 1, function(x) sum(is.na(x)))
dims<-dim(cp.2006)
num<-dims*dims
NApercentage<-(count/num) * 100
print(NApercentage)
``````

## 3 Answers

``````x = data.frame(x = c(1, 2, NA, 3), y = c(NA, NA, 4, 5))
``````

For the whole dataframe:

``````sum(is.na(x))/prod(dim(x))
``````

Or

``````mean(is.na(x))
``````

For columns:

``````apply(x, 2, function(col)sum(is.na(col))/length(col))
``````

Or

``````colMeans(is.na(x))
``````
• I was just working with is.na(X) and realized I don't even need apply, right? `> sum(is.na(cp.2006))  138` – Mona Jalal May 11 '14 at 19:55
• or just `mean(is.na(x))` – Ben Bolker May 11 '14 at 19:55
• `cols.NA<apply(cp.2006,2,function(col)sum(is.na(col))/length(col))*100` – Mona Jalal May 11 '14 at 20:02
• @fernando why the second argument to your `apply` function is `2` ? – Mona Jalal May 11 '14 at 20:03
• I noticed you edited to `prod(dim(x))` after I posted my answer. Nice. – Rich Scriven May 11 '14 at 20:05

You could also use `dplyr::summarize_all` for the column-wise proportions.

``````x %>% summarize_all(funs(sum(is.na(.)) / length(.)))
``````

Which will give

``````     x   y
1 0.25 0.5
``````

If you are interested to find percentage of complete cases.

Using Same Example mentioned here.

``````x = data.frame(x = c(1, 2, NA, 3), y = c(NA, NA, 4, 5))
``````

Output :

``````   x  y
1  1 NA
2  2 NA
3 NA  4
4  3  5
``````

Finding Complete cases:

``````complete.cases(x)
``````

Output :

`````` FALSE FALSE FALSE  TRUE
``````

Percentage of complete cases:

``````mean(complete.cases(x))
``````

Output:

`````` 0.25
``````

That means 25% of complete rows are available in data provided. i.e Only fourth row is complete rest all contains NA values.

Cheers!