I have a dataset containing per month revenue per client : Underneath is a working minimal sample. (the real dataset runs over multiple years, all months and multple clients, but you get the picture.)
client <-c("name1","name2","name3","name4","name5","name6") Feb2018 <- c(10,11,NA,21,22,NA) Jan2018 <- c(20,NA,NA,NA,58,NA) Dec2017 <- c(30,23,33,NA,NA,NA) Nov2017 <- c(40,22,75,NA,NA,11) df <- data.frame(client,Feb2018,Jan2018,Dec2017,Nov2017)
My objective is to have our revenue split up between 'new','recurrent'&'lost', by adding an extra column.
That is :
- new : clients having some revenue in 2018 but none in 2017. (name4 & name5)
- recurrent : clients having some revenue in 2017 & 2018. (name1 & name2)
- lost : clients having some revenue in 2017 but none in 2018. (name3 & name6)
I know how to use grep to select the column names,
I also know how to use is.na. but I'm really stuck in making the combination of having a selection on both the column name & the existance of NA in the selected column.
Seen I'm thinking in circles now for some hours now, I would appreciate some help. Thanks for reading.