Is there any data on the characteristics of edits robo-reviewers? There is a lot of discussion on how to tackle this problem, but I think knowing "the enemy" should come first, so better targeted approaches can be designed.
The first thing would be to know the reputation distributions. As the edit queue is empty but the close is over 11 000, they ought to be somewhere between 2 and 3k rep; but it seems a quite narrow margin.
Other data point would be how they got their reputation, and possible badges. This could help weighting the votes casted by users likely to be robo-reviewers or not.
How to identify them? My SQL skills are close to none, so I can't really do it. I would classify a robo-reviewer candidate based on:
- Number of reviews in the last month.
- Median time to decide.
- Approved / rejected ratio.
- Failed audits.