报告题目:Learning Before Testing: A Selective Nonparametric Test for Conditional Moment Restrictions
主讲嘉宾:廖志鹏,耶鲁大学经济学博士,美国加州大学洛杉矶分校 (UCLA) 经济学终身教授,主要研究领域为理论计量经济学和应用计量经济学。曾在Econometrica、Review of Economic Studies、Annals of Statistics、Journal of Econometrics、Quantitative Economics等经济学、统计学国际顶级期刊上发表学术论文数十篇,并长期担任Econometric Theory、Journal of Business & Economic Statistics、Econometrics Journal、Econometric Reviews等经济学国际顶尖学术期刊的副主编。
报告摘要:We develop a new test for conditional moment restrictions via nonparametric series regression, with approximating functions selected by Lasso. A key novelty of our approach is to account for the effect of the data-driven selection, yielding a new critical value constructed on the basis of a nonstandard truncated-Gaussian asymptotic approximation. We show that the test is correctly sized and attains a well-defined sense of adaptiveness that generally results in better power than existing methods. The improvement afforded by the new test is demonstrated in a Monte Carlo study and an empirical application on the conditional evaluation of inflation forecasts.
报告时间:2023年06月20日(周二),16:30-18:00
线下地点:厦门大学经济楼N406
线上地点:腾讯会议 ID:929 2139 6317