Since voting fraud is a big focus of the discussion of the 1-rep voting experiment, I'm curious to get some more informed estimates of how much more voting fraud would occur if users could vote at 1-rep (i.e., something better than my stupid estimate that assumed that fraud is uniformly distributed over all users).
There are two variables of interest to me: account reputation, and account age.
A 3D graph (with its bucketed data file) would be awesome, but two 2D graphs (one kernel density function for fraud distribution over account reputation, and another over account age) would also be ok.
The one over account age could be used as-is pretty easily, but the one over account rep would require extrapolating for the range [0-15)
(and yes, I know that reality would be more complicated to take such an extrapolation seriously, due to the effort it takes to earn rep (however small I simultaneously claim it to be)).
Ideally I'd like to see the variable values (reputation and account age) at the time that the user committed voting fraud (maybe just the most recent one, if multiple offences would mess up the properness of the analysis), but if that's not feasible (I assume nobody takes note of the user's reputation and account age at the time they commit voting fraud (... actually, I assume suspension history would include suspension date and reason, and then you could just recalculate score by replaying votes received up to that point)), then take the variables as their current value, for any account that ever committed voting fraud.