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Myoung-jae Lee

Researcher at Korea University

Publications -  106
Citations -  1645

Myoung-jae Lee is an academic researcher from Korea University. The author has contributed to research in topics: Estimator & Regression discontinuity design. The author has an hindex of 19, co-authored 99 publications receiving 1476 citations. Previous affiliations of Myoung-jae Lee include University of Tsukuba & Singapore Management University.

Papers
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Book

Micro-Econometrics for Policy, Program, and Treatment Effects

TL;DR: In this paper, the authors present treatment effect analysis for hidden bias analysis and compare different approaches to hidden bias, including Matching, Matching and multiple and dynamic treatments, with a tour of the book.
Book

Methods of Moments and Semiparametric Econometrics for Limited Dependent Variable Models

TL;DR: The authors provide a survey of modern techniques and how they are applied to limited dependent variable (LDV) models, including instrumental variable estimation, the generalized method of moments, extremum estimators, methods of simulated moments, minimum distance estimation, nonparametric density and regression function estimation, and semiparametric methods for LDV.
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Quadratic mode regression

TL;DR: In this paper, a quadratic kernel (QME) was proposed to smoothing the rectangular kernel for the mode regression with truncated dependent variables, which is better than RME in that it gives a consistent estimator and an asymptotic distribution.
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Probability inequalities in multivariate distributions

TL;DR: In this article, the quadrant correlation between the two error terms ul and u2 without specifjing the error term distribution is used to estimate the relationship between yl and y2 that is not explained by xl and x2, and can be used for the specification of endogenous dummy variable models.
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Identification for difference in differences with cross-section and panel data

TL;DR: In this article, the identification question in using three types of progressively more informative data is addressed: independent cross-sections, mover panels, and no-mover panels for difference-in-differences.