2021
DOI: 10.48550/arxiv.2112.13832
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Faster Algorithms and Constant Lower Bounds for the Worst-Case Expected Error

Abstract: The study of statistical estimation without distributional assumptions on data values, but with knowledge of data collection methods was recently introduced by Chen, Valiant and Valiant (NeurIPS 2020). In this framework, the goal is to design estimators that minimize the worst-case expected error. Here the expectation is over a known, randomized data collection process from some population, and the data values corresponding to each element of the population are assumed to be worst-case. Chen, Valiant and Valia… Show more

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