Jan. 1, 2023, midnight | Zhengyu Zhou, Weiwei Liu

JMLR www.jmlr.org

This paper investigates the sample complexity of learning a distributionally robust predictor under a particular distributional shift based on $\chi^2$-divergence, which is well known for its computational feasibility and statistical properties. We demonstrate that any hypothesis class $\mathcal{H}$ with finite VC dimension is distributionally robustly learnable. Moreover, we show that when the perturbation size is smaller than a constant, finite VC dimension is also necessary for distributionally robust learning by deriving a lower bound of sample complexity in terms of …

chi-square complexity computational divergence hypothesis paper shift show square statistical

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