My question is in relation to this one in the link. Please mark duplicate (and redirect me please) if anyone else has asked this extension (my search was futile).
I have a huge data over many id and time. example data:
id <- c('a','b','c','d','a','b','c','d','a','b','c','d','a','b','c', 'd') time <- c(2000,2000,2000,2000,2001,2001,2001,2001,2002,2002,2002,2002, 2003,2003,2003,2003) x <- c(1,2,3,NA,4,5,6,NA,7,8,9,NA,10,11,12,12) y <- c(NA,2,NA,NA,4,5,NA,NA,7,8,9,NA,10,11,12,12) z <- c(NA,2,3,NA,4,5,NA,NA,7,8,9,NA,NA,11,12,12) w <- c(NA,2,3,NA,4,5,6,NA,7,8,9,NA,NA,11,12, 12) mydata <- data.frame(id, time, x, y, z, w)
Question: I am trying to write a chunk of code which will do the following:
- Keep the ids' in priority order. That is, in the example data above, id b is a priority as that has no data missing over time. Then keep id c as that has 2 years with all data and one missing in 2000 and 2 missing in 2001.
- Drop ids' in priority order. d will be dropped and a will be kept.
- I have way too many ids so this code should iterate over all of them and all the years.
Initial tries: Using the solution above with some tinkering did not work for me. I can drop the id ds whenever they are NA, but for other years the variables may be populated and in that case I would want to impute a limited number of missing values. So, say d is available for atleast 6 years, I keep d.