Lets say I have a data table like this. customer_id time_stamp value 1: 1 223 4 2: 1 252 1 3: 1 456 3 4: 2 455 5 5: 2 632 2
So that customer_id and time_stamp together form a unique key. I want to add some new columns indicating the previous and last values of "value". That is, I want output like this.
customer_id time_stamp value value_PREV value_NEXT 1: 1 223 4 NA 1 2: 1 252 1 4 3 3: 1 456 3 1 NA 4: 2 455 5 NA 2 5: 2 632 2 5 NA
I want this to be fast and work with sparse, irregular times. I thought that the data.table rolling join would do it for me. However the rolling join appears to find the last time OR same time. So if you do a rolling join on two copies of the same table (after adding _PREV to the column names of the copy), this doesn't quite work. You can fudge it by adding a tiny number to the time variable of the copy but this is kinda awkward.
Is there a way to do this simply with rollin join or some other data.table method? I've found an efficient way but it still requires about 40 lines of R code. It seems that this could be a one-liner if rolling join could be told to look for the last time NOT including the same time. Or maybe there is some other neat trick.
Here is the example data. data=data.table(customer_id=c(1,2,1,1,2),time_stamp=c(252,632,456,223,455),value=c(1,2,3,4,5)) data_sorted=data[order(customer_id,time_stamp)]