Distributionally robust risk evaluation with an isotonic constraint
- URL: http://arxiv.org/abs/2407.06867v3
- Date: Thu, 07 Nov 2024 14:09:12 GMT
- Title: Distributionally robust risk evaluation with an isotonic constraint
- Authors: Yu Gui, Rina Foygel Barber, Cong Ma,
- Abstract summary: Distributionally robust learning aims to control the worst-case statistical performance within an uncertainty set of candidate distributions.
We propose a shape-constrained approach to DRL, which incorporates prior information about the way in which the unknown target distribution differs from its estimate.
Empirical studies on both synthetic and real data examples demonstrate the improved accuracy of the proposed shape-constrained approach.
- Score: 20.74502777102024
- License:
- Abstract: Statistical learning under distribution shift is challenging when neither prior knowledge nor fully accessible data from the target distribution is available. Distributionally robust learning (DRL) aims to control the worst-case statistical performance within an uncertainty set of candidate distributions, but how to properly specify the set remains challenging. To enable distributional robustness without being overly conservative, in this paper, we propose a shape-constrained approach to DRL, which incorporates prior information about the way in which the unknown target distribution differs from its estimate. More specifically, we assume the unknown density ratio between the target distribution and its estimate is isotonic with respect to some partial order. At the population level, we provide a solution to the shape-constrained optimization problem that does not involve the isotonic constraint. At the sample level, we provide consistency results for an empirical estimator of the target in a range of different settings. Empirical studies on both synthetic and real data examples demonstrate the improved accuracy of the proposed shape-constrained approach.
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