#distributionally-robust-optimization

[ follow ]
fromHackernoon
2 months ago

Achieving Fair AI Without Sacrificing Accuracy | HackerNoon

In our experiments, we applied the SA-DRO algorithm to the DDP-based KDE fair learning algorithm proposed by [11], and RFI proposed by [13]. We kept the fairness regularization penalty coefficient to be λ = 0.9. The DRO regularization coefficient can take over the range [0, 1], in this table, we set ϵ = 0.9 for SA-DRO case.
Data science
[ Load more ]