Robust Hypothesis Testing Using Wasserstein Uncertainty Sets
GAO, RUI, Xie, Liyan, Xie, Yao, Xu, Huan
–Neural Information Processing Systems
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.
Neural Information Processing Systems
Dec-31-2018
- Country:
- North America
- Canada > Quebec
- Montreal (0.04)
- United States
- Georgia > Fulton County
- Atlanta (0.05)
- New York (0.04)
- Georgia > Fulton County
- Canada > Quebec
- North America
- Technology: