I am trying to get many lm models work in a function and I need to automatically drop constant columns from my data.table. Thus, I want to keep only columns with two or more unique values, excluding NA from the count.
I tried several methods found on SO, but I am still not able to drop columns that have two values: a constant and NAs.
My reproducible code:
library(data.table)
df <- data.table(x=c(1,2,3,NA,5), y=c(1,1,NA,NA,NA),z=c(NA,NA,NA,NA,NA), 
d=c(2,2,2,2,2))
> df
    x  y  z d
1:  1  1 NA 2
2:  2  1 NA 2
3:  3 NA NA 2
4: NA NA NA 2
5:  5 NA NA 2
My intention is to drop columns y, z, and d since they are constant, including y that only have one unique value when NAs are omitted.
I tried this:
same <- sapply(df, function(.col){ all(is.na(.col))  || all(.col[1L] == .col)})
df1 <- df[ , !same, with = FALSE]
> df1
    x  y
1:  1  1
2:  2  1
3:  3 NA
4: NA NA
5:  5 NA
As seen, 'y' is still there ... Any help?
Let's create new DataFrame with non-constant value columns. You can also remove columns using Pandas' df. drop().
Because you have a data.table, you may use uniqueN and its na.rm argument:
df[ , lapply(.SD, function(v) if(uniqueN(v, na.rm = TRUE) > 1) v)]
#     x
# 1:  1
# 2:  2
# 3:  3
# 4: NA
# 5:  5
A base alternative could be Filter(function(x) length(unique(x[!is.na(x)])) > 1, df)
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