I'm proposing that the criteria for audit-induced review bans be moved from an absolute value over a given timespan to also take into account a percentage factor of passed/failed.
As I understand it, one receives an audit ban after a certain absolute number of audits are failed within a 60 day period. I think it is also universally agreed on that audit questions, as they are chosen by an automated process, may sometimes be either unilaterally bad, with the wrong response required, or borderline such that multiple responses are understandable. So audits necessarily have a false positive rate. Furthermore, audits have an additional false positive rate based on the fact that even good, careful reviewers may miss something, have a brain slip, or a mis-click at times.
Now consider two reviewers who both are of the same quality in conducting reviews, pay equal attention (i.e. neither "robo-reviews"), and are otherwise similar. But one reviewer only reviews a little each day, and the other reviewer attempts to contribute more to the review process by reviewing more items. Or one reviewer only acts sporadically, and the other makes a daily habit of reviewing.
The more frequent reviewer will receive more audits, hit more false positives, and therefore have a greater chance of being banned. This seems to me a misfeature.
In pseudo-code I imagine that the current logic for a ban looks something like recentFailedAudits > n
, for some n
. I would propose that we move the criteria to something like recentFailedAudits > n && recentFailedAudits / totalRecentAudits > m
for some m
between [0,1]
. (Personally, I might conservatively choose that m
to be one standard deviation below the mean, but I don't feel strongly in that regard).