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Category
Seminar
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Date
20241106 ~ 20241106Time
17:00 ~ 시간을 입력해주세요. -
Place
Zoom & Online Streaming
Host
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Speaker
김일문
Affiliation
Assistant Professor, Yonsei University
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Subject
특별초청 공개 세미나
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Notice
Title: Permutation methods for comparing distributions
Speaker: 김일문 (Assistant Professor, Yonsei University)
Abstract: The advent of large-scale, high-dimensional, and complex datasets has posed significant challenges for classical inference methods, which frequently yield unreliable results when applied to modern datasets. These challenges call for new tools and theoretical frameworks better suited to contemporary data environments. In this talk, we consider permutation tests as a promising alternative to address these issues and discuss their utility in modern applications. In the first part of this talk, we build on permutation tests to present a flexible framework for comparing distributions that can leverage any classification or regression algorithms. Depending on the selected classification or regression model, the proposed framework can efficiently handle different types of variables and data structures, demonstrating competitive power across many practical scenarios. In the second part, we introduce a theoretical framework for analyzing the power of permutation tests. Despite their growing popularity and empirical success, the theoretical properties of permutation tests, particularly regarding power, remain underexplored beyond simple cases. We aim to partly fill this gap by presenting a general non-asymptotic framework for analyzing the minimax power of permutation tests. We illustrate the utility of our proposed framework in two-sample and independence testing, showing that permutation tests can achieve minimax optimality in diverse settings.
Zoom Link: *https://us06web.zoom.us/j/4564461054?pwd=TVUt6ys0rcjoVTMNAkaUmN8YJUiK8T.1&omn=88642237048
특별초청 공개 세미나
최고관리자
2024-11-04