主讲人:王宇龙 副教授(美国Lehigh大学)
主持人:谢聪 助理教授(辽宁大学中国经济研究院)
嘉宾介绍:马湘君 教授(辽宁大学中国经济研究院)
时间:2026年5月21日(周四) 14:00-15:30(北京时间)
地点:辽宁大学蒲河校区经济学部大楼547室
线上地址:腾讯会议377-781-126
语言:中文/英文
摘要:Conventional cluster-robust inference can be invalid when data contain clusters of unignorably large size. We formalize this issue by deriving a necessary and sufficient condition for its validity, and show that this condition is frequently violated in practice: specifications from 77% of empirical research articles in American Economic Review and Econometrica during 2020–2021 appear not to meet it. To address this limitation, we propose a genuinely robust inference procedure based on a new cluster score bootstrap. We establish its validity and size control across broad classes of data-generating processes where conventional methods break down. Simulation studies corroborate our theoretical findings, and empirical applications illustrate that employing the proposed method can substantially alter conventional statistical conclusions.
主讲人简介:

王宇龙,美国Lehigh大学副教授,美国普林斯顿大学经济学博士。英文期刊Econometric Reviews副主编。主要研究兴趣包括理论与应用计量经济学,统计学,国际贸易,健康经济学。研究成果曾发表在Journal of the American Statistical Association, Journal of Econometrics, Journal of Business & Economic Statistics, Econometric Theory, Journal of Applied Econometrics和Journal of Health Economics 等国外顶级学术刊物上。Bottom of Form