Publication | Open Access
Robust Hypothesis Testing Using Wasserstein Uncertainty Sets
18
Citations
28
References
2018
Year
Density EstimationEngineeringMachine LearningData ScienceRobust StatisticUncertainty QuantificationConvex Safe ApproximationStatistical FoundationNew Robust DetectorRobustness (Computer Science)Empirical DistributionStatistical InferenceUncertainty ModelingRobust OptimizationStatisticsWasserstein Distance
We develop a novel computationally efficient and general framework for robust hypothesis testing. The new framework features a new way to construct uncertainty sets under the null and the alternative distributions, which are sets centered around the empirical distribution defined via Wasserstein metric, thus our approach is data-driven and free of distributional assumptions. We develop a convex safe approximation of the minimax formulation and show that such approximation renders a nearly-optimal detector among the family of all possible tests. By exploiting the structure of the least favorable distribution, we also develop a tractable reformulation of such approximation, with complexity independent of the dimension of observation space and can be nearly sample-size-independent in general. Real-data example using human activity data demonstrated the excellent performance of the new robust detector.
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