I am looking for a code or feature that assigns a value to the 5 highest values and 5 lowest values. This could, for example, be from a dataset similar to this:
df <- data.frame(
Date = c(rep("2010-01-31",16), rep("2010-02-28", 14)),
Value=c(rep(c(1,2,3,4,5,6,7,8,9,NA,NA,NA,NA,NA,15),2))
)
Edit: This is just a sample data. The data I use is more complex and the code should, therefore, allow for varying lengths of the column Date and also for multiple values that are missing (NAs).
I would then like a value assigned to the five lowest equal to "5w" and "5b" to the 5 highest values The data should then be wrapped in a group_by based on the date so that the process is repeated at each period. I have tried using percentile but this method does not maintain a constant number of values in each bracket. I am therefore looking for a method that allows the number of values in each bracket to be constant. If it is possible it would be nice to put all firms into 5% brackets. By this, I mean to have 20 brackets with all firms distributed. This means that the best bracket would consist of 5% of total firms with the highest value. The values could be 0:19. I.e meaning that the expected output of a firm in the highest value bracket would be 19 and a firm in the lowest bracket would receive a value of 0.
Thanks In advance