Distribution-free two-sample testing with blurred total variation distance
AI 摘要
研究无分布假设下的双样本检验问题,并引入模糊TV距离进行推断。
主要贡献
- 提出模糊TV距离用于无分布假设的双样本检验
- 提供模糊TV距离上下界的理论保证
- 研究模糊TV距离在高维空间的性质
方法论
理论分析模糊TV距离的性质,并进行理论推导,提供了上下界保证。
原文摘要
Two-sample testing, where we aim to determine whether two distributions are equal or not equal based on samples from each one, is challenging if we cannot place assumptions on the properties of the two distributions. In particular, certifying equality of distributions, or even providing a tight upper bound on the total variation (TV) distance between the distributions, is impossible to achieve in a distribution-free regime. In this work, we examine the blurred TV distance, a relaxation of TV distance that enables us to perform inference without assumptions on the distributions. We provide theoretical guarantees for distribution-free upper and lower bounds on the blurred TV distance, and examine its properties in high dimensions.