网站首页 学术活动 邹讲座系列 杰出学者论坛 正文

【第28期】李嘉:Optimal Inference for Spot Regressions

2023-09-17

发布者:点击次数:

报告题目Optimal Inference for Spot Regressions

主讲嘉宾Professor LI Jia obtained his Ph.D. in economics from Princeton University in 2011. He is currently the Lee Kong Chian Professor of Economics at Singapore Management University, and was a professor of economics at Duke University from 2011 to 2021. Professor Li’s research focuses on semiparametric and nonparametric methods in time series analysis, with a special emphasis on the analysis of high frequency financial data. His work has been published in leading journals across economics, statistics, and probability, including American Economic Review, Econometrica, Review of Economic Studies, Review of Economics and Statistics, Journal of Econometrics, JASA, Annals of Statistics, and Annals of Applied Probability. He is an elected fellow of the Society of Financial Econometrics and the Journal of Econometrics.


报告摘要Betas from return regressions are commonly used to measure systematic financial market risks. “Good” beta measurements are essential for a range of empirical inquiries in finance and macroeconomics. We introduce a novel econometric framework for the nonparametric estimation of time-varying betas with high-frequency data. The “local Gaussian” property of the generic continuous-time benchmark model enables optimal “finite-sample” inference in a well-defined sense. It also affords more reliable inference in empirically realistic settings compared to conventional large-sample approaches. Two applications pertaining to the tracking performance of leveraged ETFs and an intraday event study illustrate the practical usefulness of the new procedures.


报告时间2023年9月19日(周二),16:30-18:00

线下地点厦门大学经济楼N302

线上地点腾讯会议 ID:626-452-977