# Min and Max across multiple columns with NAs

For the following sample data `dat`, is there a way to calculate `min` and `max` while handling `NA`s. My input is:

``````dat <- read.table(text = "ID  Name   PM      TP2   Sigma
1   Tim    1       2    3
2   Sam    0       NA   1
3   Pam    2       1    NA
4   Ali    1       0    2
NA  NA     NA      NA   NA
6   Tim    2       0    7", header = TRUE)
``````

My required output is:

``````ID  Name  PM      TP2   Sigma  Min  Max
1    Tim  1       2    3       1    3
2    Sam  0       NA   1       0    1
3    Pam  2       1    NA      1    2
4    Ali  1       0    2       0    2
NA   NA   NA      NA   NA      NA   NA
6    Tim  2       0    7       0    7

``````

My Effort

1- I have seen similar posts but none of them has discussed issues where all entries in a column were `NA`s e.g., Get the min of two columns Based on this, I have tried `pmin()` and `pmax()`, but they do not work for me.

2- Another similar question is minimum (or maximum) value of each row across multiple columns. Again, there is no need to handle `NA`s.

3- Lastly, this question minimum (or maximum) value of each row across multiple columns talks about `NA` but not all elements in a column have missing values.

4- Also, some of the solutions require that the columns list to be included to be excluded is typed manually, my original data is quite `wide`, I want to have an easier solution where I can express columns by numbers rather than names.

Partial Solution

I have tried the following solution but `Min` column ends up having `Inf` and the `Max` column ends up having `-Inf`.

``````dat\$min = apply(dat[,c(2:4)], 1, min, na.rm = TRUE)
dat\$max = apply(dat[,c(2:4)], 1, max, na.rm = TRUE)
``````

I can manually get rid of `Inf` by using something like:

``````dat\$min[is.infinite(dat\$min)] = NA

``````

But I was wondering if there is a better way of achieving my desired outcome? Any advice would be greatly appreciated.

You can use `hablar`'s `min_` and `max_` function which returns `NA` if all values are `NA`.

``````library(dplyr)
library(hablar)

dat %>%
rowwise() %>%
mutate(min = min_(c_across(-ID)),
max = max_(c_across(-ID)))
``````

You can also use this with `apply` -

``````cbind(dat, t(apply(dat[-1], 1, function(x) c(min = min_(x), max = max_(x)))))

#  ID PM TP2 Sigma min max
#1  1  1   2     3   1   3
#2  2  0  NA     1   0   1
#3  3  2   1    NA   1   2
#4  4  1   0     2   0   2
#5 NA NA  NA    NA  NA  NA
#6  5  2   0     7   0   7
``````
• Thank @Ronak Shah, would the first solution also require that I explicitly exclude all columns that should not be considered in decision making? Like the `ID` column above? Could you also explain, what does c_across mean? Commented Jun 8, 2021 at 11:21
• Yes, I have used `c_across(-ID)` to exclude `ID` from decision making. `c_across` is used along with `rowwise` to combine multiple columns together. Commented Jun 8, 2021 at 11:23
• Any faster way where instead of writing column names, I could specify column numbers for exclusion and decision making? Commented Jun 8, 2021 at 11:26
• Yes, `c_across(-1)` would work, so would `c_across(2:4)` Commented Jun 8, 2021 at 11:29

On way might be to use `pmin` and `pmax` with `do.call`:

``````dat\$min <- do.call(pmin, c(dat[,c(3:5)], na.rm=TRUE))
dat\$max <- do.call(pmax, c(dat[,c(3:5)], na.rm=TRUE))
dat
#  ID Name PM TP2 Sigma min max
#1  1  Tim  1   2     3   1   3
#2  2  Sam  0  NA     1   0   1
#3  3  Pam  2   1    NA   1   2
#4  4  Ali  1   0     2   0   2
#5 NA <NA> NA  NA    NA  NA  NA
#6  6  Tim  2   0     7   0   7
``````

The following solution seems to work with the `transform()` function:

``````dat <- transform(dat, min = pmin(PM, TP2, Sigma))
dat <- transform(dat, max = pmin(PM, TP2, Sigma))
``````

Without using the `transform()` function, the data seemed to mess up. Also, the above command requires that all column names are written explicitly. I do not understand why writing a short version like below, fails.

``````pmin(dat[,2:4])) or
pmax(dat[,2:4]))
``````

I am posting the only solution that I could come up with, in case someone else stumbles upon a similar issue.

I would use data.table for this task. I use the rowSums to count the numbers of row with na and compare it to the number of columns in total. I just use in dat.new all columns where you have at least one nonNA value. Then you can use the na.rm=T as usually.

I hope this little code helps you.

``````
library(data.table)

dat <- read.table(text = "ID    PM      TP2   Sigma
1      1       2    3
2      0       NA   1
3      2       1    NA
4      1       0    2
NA     NA      NA   NA
5      2       0    7", header = TRUE)

dat <- data.table(dat)
number.cols <- dim(dat)[2] #4
dat[,id:=c(1:dim(dat)[1])]
# > dat
#     ID PM TP2 Sigma id
# 1:  1  1   2     3  1
# 2:  2  0  NA     1  2
# 3:  3  2   1    NA  3
# 4:  4  1   0     2  4
# 5: NA NA  NA    NA  5
# 6:  5  2   0     7  6

#use new data.table to select all rows with at least one nonNA value
dat.new <- dat[rowSums(is.na(dat))<number.cols,]
dat.new[, MINv:=min(.SD, na.rm=T), by=id]
dat.new[, MAXv:=max(.SD, na.rm=T), by=id]

#if you need it merged to the old data
dat <- merge(dat, dat.new[,.(id,MINv,MAXv)], by="id")
``````