Identification, Estimation, and Inference in Linear Dynamic Panel Data Models Using Nonlinear Moment Conditions

主讲人

Andrew Pua

简介

<div class="m_3280641688463185594m_5265719883752386177_rp_P4" id="m_3280641688463185594m_5265719883752386177Item.MessagePartBody" style="font-family: Calibri, Arial, Helvetica, sans-serif; font-size: 16px;"> <div class="m_3280641688463185594m_5265719883752386177_rp_Q4 m_3280641688463185594m_5265719883752386177ms-font-weight-regular m_3280641688463185594m_5265719883752386177ms-font-color-neutralDark m_3280641688463185594m_5265719883752386177rpHighlightAllClass m_3280641688463185594m_5265719883752386177rpHighlightBodyClass" id="m_3280641688463185594m_5265719883752386177Item.MessageUniqueBody"> <div class="m_3280641688463185594m_5265719883752386177rps_3333"> <div dir="ltr"> <div> <p class="MsoNormal" align="left"><span style="font-size: small;"><span style="font-family: 宋体;">Linear dynamic panel data methods are now convenient and practical tools available to the applied researcher. Despite wide usage, many of these methods present both theoretical and practical issues that have not been adequately resolved, especially for methods that have no software counterparts yet. In particular, we will study more intensively nonlinear moment conditions that have been proposed by Ahn and Schmidt (1995) but has been largely ignored by theorists and practitioners for a very long time.&nbsp;We show that estimators based on these nonlinear moment conditions are able to distinguish among not-so-persistent panel data, highly persistent panel data, and panel data with unit roots under certain model setups. It turns out that the widely available methods (in terms of existing software) either are unable to distinguish very well these three cases or are able to do so but under additional assumptions that are not plausible in empirical research. Nonlinear moment conditions will lead to the use of numerical algorithms which raise theoretical and practical issues for implementation. Instead of ignoring these issues, we show how to address them directly in order to make the estimators relevant to practitioners who need guidance for implementation.&nbsp;</span></span></p> </div> </div> </div> </div> </div>

时间

2016-11-11(Friday)12:30-14:00

地点

N301, Econ Building

讲座语言

English

主办单位

承办单位

类型

独立讲座

联系人信息

主持人

专题网站

专题

主讲人简介

<p class="Default"><span lang="EN-US">Assistant Professor at Wang Yanan Institute for Studies in Economics (WISE) and Department of Statistics, School of Economics,Xiamen University.</span><o:p></o:p></p> <p class="Default"><o:p></o:p></p>

期数

计量统计BBS

主讲人: Andrew Pua
主讲人简介:

Assistant Professor at Wang Yanan Institute for Studies in Economics (WISE) and Department of Statistics, School of Economics,Xiamen University.

简介:
独立讲座
时间: 2016-11-11(Friday)12:30-14:00
地点: N301, Econ Building
期数: 计量统计BBS
类型: 独立讲座