I have time-series data with some missing data for which I am running some estimation function over rolling windows. The windows are not uniform length and each variable has differing start and end dates. I want to remove any windows which have any missing data. The windows overlap, so a single missing observation will often remove a great many windows from consideration. What I want is a mapping from each date into the windows which contain it.
Currently, I have a logical matrix which has a row for every possible day and then each column represents one of the windows with true values for the days of that window. I can then subset that matrix to rows representing the missing data, and whichever columns contain any true values are the invalid windows. The problem is that the logical matrix gets large (10k x 10k ~100mb) and there can be many. I can convert to sparse which solves the size problem, but the calculation of which windows to remove becomes very slow when the windows are long.
This doesn't smell like a problem that should be resource intensive (either memory or computation), is there a better way?
Edit: Let me add an example so this may be a little clearer. Say the full set of dates range from 1 to 100. Windows are 1:10, 2:11, 3:12 and so on through to 91:100 (these are uniform, but it doesn't matter for the example). I have a series that runs from 5 to 25, but has NaN for 17.
That one NaN knocks out ten windows (8:17 through to 17:26). I want an efficient mapping from observation 17 to windows 8:17. Clearly, it's pretty easy when the windows are uniform length, but what is an efficient method when the windows are irregular?