The example shows measurements of production output of different factories, where the first columns denotes the factory and the last column the amount produced.
factory <- c("A","A","B","B","B","B","B","C","D")
production <- c(15, 2, 1, 1, 2, 1, 2,20,5)
df <- data.frame(factory, production)
df
factory production
1 A 15
2 A 2
3 B 1
4 B 1
5 B 2
6 B 1
7 B 2
8 C 20
9 D 5
Now I want to lump together the factories into fewer levels, based on their total output in this data set.
With the normal forcats::fct_lump, I can lump them by the number of rows in which thy appear, e.g. for making 3 levels:
library(tidyverse)
df %>% mutate(factory=fct_lump(factory,2))
factory production
1 A 15
2 A 2
3 B 1
4 B 1
5 B 2
6 B 1
7 B 2
8 Other 20
9 Other 5
but I want to lump them based on the sum(production), retaining the top n=2 factories (by total output) and lump the remaining factories. Desired result:
1 A 15
2 A 2
3 Other 1
4 Other 1
5 Other 2
6 Other 1
7 Other 2
8 C 20
9 Other 5
Any suggestions?
Thanks!