Distributionally Robust Learning
This monograph develops a comprehensive statistical learning framework that is robust to (distributional) perturbations in the data using Distributionally Robust Optimization (DRO) under the Wasserstein metric. Beginning with fundamental properties of the Wasserstein metric and the DRO formulation,...
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Zusammenfassung: | This monograph develops a comprehensive statistical learning framework that
is robust to (distributional) perturbations in the data using Distributionally
Robust Optimization (DRO) under the Wasserstein metric. Beginning with
fundamental properties of the Wasserstein metric and the DRO formulation, we
explore duality to arrive at tractable formulations and develop finite-sample,
as well as asymptotic, performance guarantees. We consider a series of learning
problems, including (i) distributionally robust linear regression; (ii)
distributionally robust regression with group structure in the predictors;
(iii) distributionally robust multi-output regression and multiclass
classification, (iv) optimal decision making that combines distributionally
robust regression with nearest-neighbor estimation; (v) distributionally robust
semi-supervised learning, and (vi) distributionally robust reinforcement
learning. A tractable DRO relaxation for each problem is being derived,
establishing a connection between robustness and regularization, and obtaining
bounds on the prediction and estimation errors of the solution. Beyond theory,
we include numerical experiments and case studies using synthetic and real
data. The real data experiments are all associated with various health
informatics problems, an application area which provided the initial impetus
for this work. |
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DOI: | 10.48550/arxiv.2108.08993 |