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Testing Imprecise Hypotheses

统计理论 2026-01-28 v2 统计方法学 统计理论

摘要

Many scientific applications involve testing theories that are only partially specified. This task often amounts to testing the goodness-of-fit of a candidate distribution while allowing for reasonable deviations from it. The tolerant testing framework provides a systematic way of constructing such tests. Rather than testing the simple null hypothesis that data was drawn from a candidate distribution, a tolerant test assesses whether the data is consistent with any distribution that lies within a given neighborhood of the candidate. As this neighborhood grows, the tolerance to misspecification increases, while the power of the test decreases. In this work, we characterize the information-theoretic trade-off between the size of the neighborhood and the power of the test, in several canonical models. On the one hand, we characterize the optimal trade-off for tolerant testing in the Gaussian sequence model, under deviations measured in both smooth and non-smooth norms. On the other hand, we study nonparametric analogues of this problem in smooth regression and density models. Along the way, we establish the sub-optimality of the classical chi-squared statistic for tolerant testing, and study simple alternative hypothesis tests.

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引用

@article{arxiv.2510.20717,
  title  = {Testing Imprecise Hypotheses},
  author = {Lucas Kania and Tudor Manole and Larry Wasserman and Sivaraman Balakrishnan},
  journal= {arXiv preprint arXiv:2510.20717},
  year   = {2026}
}