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中央财经大学杨玥含教授学术报告(20260515)
发布时间:2026-05-12 10:46  作者: 李婷婷  初审:xn_math  复审:唐宇  来源:本站原创  浏览次数:

报告题目: Randomization-based inference for ordinal outcomes in $2^K$ factorial experiments

杨玥含 教授(中央财经大学)

报告时间2026515日(星期13:00-14:00

报告地点:数学大楼914报告厅

参加人员:教师、研究生、本科生

报告摘要Randomized $2^K$ factorial experiments with ordinal outcomes are common in economics, biomedical research, and behavioral studies, where multiple interventions may jointly affect an ordered response. Within the potential outcomes framework, factorial effects are often defined through linear contrasts of average potential outcomes, but such contrasts can be difficult to interpret when outcome categories have a natural ordering. To address this, we propose a novel framework that generalizes traditional factorial designs to incorporate ordinal outcomes, and define probability-based main and interaction effects. Because these estimands depend on the unobserved joint distribution of potential outcomes, they are generally not point-identified. We derive closed-form bounds through partial identification, relying solely on the observable marginal distributions, without imposing parametric models or distributional assumptions. In particular, we obtain sharp bounds for main effects and valid, possibly non-sharp bounds for interaction effects, where excluding $0$ yields a robust conclusion on the interaction direction. Our framework allows the single factor as a special case and is applicable to both binary and multicategory outcomes. Considering the wide application of monotonicity in practice, we derive its testable equivalent form, which can yield tighter identification intervals for the factorial effects. For inference, we construct nonparametric bootstrap confidence intervals. Simulation and empirical applications reveal that the gap between the valid algebraic bounds for the interaction effects and the sharp bounds obtained via computationally intensive linear programming is negligible.

报告人简介:杨玥含,中央财经大学统计与数学学院教授,博导,北京大学博士。中央财经大学青年英才、龙马学者青年学者。主要从事因果推断、迁移学习、复杂数据分析等研究。在JASABiometrikaJBESJCGSPattern Recognition、《中国科学:数学》等国内外期刊发表论文50余篇。