主讲人:
王宇龙(雪城大学助理教授)
主持老师:
(北大经院)王熙
参与老师:
(北大经院)王一鸣、刘蕴霆
(北大国发院)沈艳、黄卓、孙振庭、张俊妮
(北大新结构经济学研究院)胡博
时间:
2021年5月14日(周五)
10:00-11:30
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会议 ID:624 697 960
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(线下形式):8797威尼斯老品牌107会议室
报告摘要:
This paper develops a threshold regression model where an unknown relationship between two variables nonparametrically determines the threshold. We allow the observations to be cross-sectionally dependent so that the model can be applied to determine an unknown spatial border for sample splitting over a random field. We derive the uniform rate of convergence and the nonstandard limiting distribution of the nonparametric threshold estimator. We also obtain the root-n consistency and the asymptotic normality of the regression coefficient estimator. Our model has broad empirical relevance as illustrated
by estimating the tipping point in social segregation problems as a function of demographic characteristics; and determining metropolitan area boundaries using nighttime light intensity collected from satellite imagery. We find that the new empirical results are substantially different from those in the existing studies.
主讲人简介:
Yulong Wang is an Assistant Professor of Economics in the Maxwell School and a Senior Research Associate in the Center for Policy Research. Before joining Syracuse University, Wang earned a B.A. from Tsinghua University and Ph.D. in economics from Princeton University. His current research focuses on designing new econometric tools in the non-standard instances when the classic asymptotically Gaussian framework fails to provide good performance. These tools are strongly motivated by empirical applications. Leading examples include estimating the location of the tipping point in social segregation, determining metropolitan areas based on nighttime light intensity, inference about winner’s properties in auctions, and studying the cost of extreme events such as natural disasters.