Consider the following toy dataset with two variables:

* Example generated by -dataex-. To install: ssc install dataex
input str10 date float size
"30.06.2018" 15
"29.06.2018" 10
"30.06.2018" 12
"01.07.2018" 13
"29.06.2018" 20
"30.06.2018" 22
"01.07.2018"  9

For each date I want to drop the top 1% and bottom 1% of size. So, if there are 100 observations for 30.06.2018 the highest and the lowest size on this date should be dropped.

I can generate percentiles for a variable but I struggle to do it while conditioning on another variable.

  • 1
    So, what happens with less than 100 observations for each date? Check out egen either way, but watch what it does with different group sizes. – Nick Cox Jul 5 at 10:22
  • Experiment suggests that you will drop the min and max even for sample sizes less than 100. Is that what you want? – Nick Cox Jul 5 at 16:21

The following code snippet works:

by date: egen one_percentile = pctile(size), p(1)
by date: egen ninetynine_percentile = pctile(size), p(99)
generate outlier = 0
replace outlier = 1 if size <= one_percentile | size >= ninetynine_percentile
drop if outlier == 1

If there are <100 observations for a date, the lowest and highest will be dropped.

However, one can get around this by counting the observations for each date and only dropping the outlier if the count is >= 100.

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