# 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 –  TangoStar Sep 16 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 at 13:03
thanks dayana :) how can I implement it with for() ? –  TangoStar Sep 16 at 15:42
@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? –  dayne Sep 16 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, 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
``````
-