# Using apply function on a matrix with NA entries

I read Data from a csv file. If I see this file in R, I have:

``````  V1 V2  V3 V4  V5 V6 V7
1 14 25  83 64 987 45 78
2 15 65 789 32  14 NA NA
3 14 67  89 14  NA NA NA
``````

If I want the maximum value in each column, I use this:

``````apply(df,2,max)
``````

and this is the result:

`````` V1  V2  V3  V4  V5  V6  V7
15  67 789  64  NA  NA  NA
``````

but it works on the column that has no `NA`. How can I change my code, to compare columns with `NA` too?

You just need to add `na.rm=TRUE` to your apply call.

``````apply(df,2,max,na.rm=TRUE)
``````

Note: This does assume every column has at least one data point. If one does not `sum` will return `0`.

EDIT BASED ON COMMENT

`fft` does not have an `na.rm` argument. Therefore, you will need to write your own function.

``````apply(df,2,function(x){fft(x[!is.na(x)])})
``````

For example:

``````df <- data.frame(matrix(5,5,5))
df[,3] <- NA

> df
X1 X2 X3 X4 X5
1  5  5 NA  5  5
2  5  5 NA  5  5
3  5  5 NA  5  5
4  5  5 NA  5  5
5  5  5 NA  5  5

> apply(df,2,function(x){fft(x[!is.na(x)])})
\$X1
[1] 2.500000e+01+0i 1.776357e-15+0i 1.776357e-15+0i 1.776357e-15+0i
[5] 1.776357e-15+0i

\$X2
[1] 2.500000e+01+0i 1.776357e-15+0i 1.776357e-15+0i 1.776357e-15+0i
[5] 1.776357e-15+0i

\$X3
complex(0)

\$X4
[1] 2.500000e+01+0i 1.776357e-15+0i 1.776357e-15+0i 1.776357e-15+0i
[5] 1.776357e-15+0i

\$X5
[1] 2.500000e+01+0i 1.776357e-15+0i 1.776357e-15+0i 1.776357e-15+0i
[5] 1.776357e-15+0i
``````
• Thank you for your answer, but If I use `apply(df,2,fft,na.rm=TRUE)` I get an error:`Error in FUN(newX[, i], ...) : unused argument(s) (na.rm = TRUE)` It seems, that it is not working with FFT ( with others like max,...) it works fine Sep 16, 2013 at 12:57
• Look at `?apply`: the arguments after FUN (e.g. `max` or `fft`) are passed to FUN. And `fft` does not have a `na.rm` parameter, therefore you get an error. You can use `na.omit()` on the column first, and then `fft`.
– ROLO
Sep 16, 2013 at 13:03
• @TangoStar It's Dayne - not Dayana - but I am unsure what you mean. Why would you want to use a for loop when apply works? Sep 16, 2013 at 15:45

Another option:

``````sapply(apply(df,2,na.exclude), fft)
``````

EDIT: the code above may fail if `apply()` returns a matrix instead of a list. And this will happen if there are no `NA`s for instance. The code below fixes that:

``````sapply(tapply(m, col(m), na.exclude), max)
``````

Interesting, there is no need to set `simplify=FALSE`, as the result of `tapply()` will only be simplified if `na.exclude()` returns a single scalar per column; and in this case `sapply` works in the same way.

Another option is to use the following:

``````apply(na.omit(df),2,max)
``````

na.omit(df) will simply remove incomplete cases from each column of your data frame df and then the apply() function will yield the max value for each of the columns.

Another option, this will return `-Inf` if all elements of col are NA

``````df<-structure(list(x = c(10, 12, 13), y = c(12, 13, NA), z = c(NA_real_,
NA_real_, NA_real_)), .Names = c("x", "y", "z"), row.names = c(NA,
-3L), class = "data.frame")

kk<-Map(function(x) max(na.omit(df[,x])),as.list(names(df)))
ll<-do.call(rbind,kk)
rownames(ll)<-names(df)

> ll

[,1]
x   13
y   13
z -Inf
``````

This might be a result of a posterior version but you could actually do:

``````apply(df,2,function(x) max(x,na.rm=T))
``````

which will return you a vector or equivalently:

``````lapply(df,function(x) max(x,na.rm=T))
``````

which will return you a list. Notice that whenever one of the columns in df is a character it will fail returning all NA's. In this case you may need to do a prior select of the objective variables.