Maohao Shen, Yuheng Bu, et al.
AAAI 2023
We consider the task of training machine learning models with data-dependent constraints. Such constraints often arise as empirical versions of expected value constraints that enforce fairness or stability goals. We reformulate data-dependent constraints so that they are calibrated: enforcing the reformulated constraints guarantees that their expected value counterparts are satisfied with a user-prescribed probability. The resulting optimization problem is amendable to standard stochastic optimization algorithms, and we demonstrate the efficacy of our method on a fairness-sensitive classification task where we wish to guarantee the classifier's fairness (at test time).
Maohao Shen, Yuheng Bu, et al.
AAAI 2023
S. Ilker Birbil, Donato Maragno, et al.
AAAI 2023
Felipe Maia Polo, Mikhail Yurochkin, et al.
NeurIPS 2023
Yolanda Gomez, Jesus Rios Aliaga, et al.
International Journal of Forecasting