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Three Essays On Dynamic Panel Data Estimation


Three Essays On Dynamic Panel Data Estimation
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Three Essays On Dynamic Panel Data Estimation


Three Essays On Dynamic Panel Data Estimation
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Author :
language : en
Publisher:
Release Date : 2004

Three Essays On Dynamic Panel Data Estimation written by and has been published by this book supported file pdf, txt, epub, kindle and other format this book has been release on 2004 with categories.


This dissertation consists of three essays, first two of which consider a new estimation method of dynamic panel data models and the last one considers an application of these models. The first essay (Chapter 1) offers empirical likelihood (EL) estimation of dynamic panel data models, which provide great flexibility to empirical researchers. EL estimation method is shown to have great advantages in usual settings, however little is known on the relative merits of these estimators in panel data models. With this essay, we try to fill that gap by establishing the asymptotic properties of the EL estimator for a dynamic panel model with individual effects when both the time and the cross-section dimensions tend to infinity. We give the conditions under which this estimator is consistent and asymptotically normal. In the second essay (Chapter 2), via a Monte Carlo study, we assess the relative finite sample performances of EL, generalized method of moments, and limited information maximum likelihood estimators for an autoregressive panel data model when there are many moment conditions. We also extend our results to the many weak moments settings. Our results suggest that when the overall performances are concerned, in terms of median, interquartile range and median absolute error of the estimators, in both strong and weak moments settings, EL is more reliable. In the final essay (Chapter 3) we consider an application of dynamic panel data models to examine the determinants of the allocation of state highway funds using panel data for North Carolina's 100 counties for the years 1990 to 2005. We make two main contributions with this essay. First, although there have been numerous studies of highway funding at the state level, to our knowledge, there is no analysis at the sub-state or county levels. Second, by using dynamic panel data models and sophisticated methods to estimate them, we account for any potential persistence in the process of adjustment toward an equilibri.



Three Essays On Dynamic Panel Data Estimation


Three Essays On Dynamic Panel Data Estimation
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Author : Gunce Eryuruk
language : en
Publisher:
Release Date : 2009

Three Essays On Dynamic Panel Data Estimation written by Gunce Eryuruk and has been published by this book supported file pdf, txt, epub, kindle and other format this book has been release on 2009 with categories.


Keywords: system GMM estimator, highway spending, dynamic panel data, empirical likelihood estimator.



Three Essays On Share Contracts Labor Supply And The Estimation Of Models For Dynamic Panel Data


Three Essays On Share Contracts Labor Supply And The Estimation Of Models For Dynamic Panel Data
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Author : Seung Chan Ahn
language : en
Publisher:
Release Date : 1990

Three Essays On Share Contracts Labor Supply And The Estimation Of Models For Dynamic Panel Data written by Seung Chan Ahn and has been published by this book supported file pdf, txt, epub, kindle and other format this book has been release on 1990 with Labor contract categories.




Essays In Dynamic Panel Data Models And Labor Supply


Essays In Dynamic Panel Data Models And Labor Supply
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Author : Kolobadia Ada Nayihouba
language : en
Publisher:
Release Date : 2019

Essays In Dynamic Panel Data Models And Labor Supply written by Kolobadia Ada Nayihouba and has been published by this book supported file pdf, txt, epub, kindle and other format this book has been release on 2019 with categories.


This thesis is organized in three chapters. The first two chapters propose a regularization approach to the estimation of two estimators of the dynamic panel data model : the Generalized Method of Moment (GMM) estimator and the Limited Information Maximum Likelihood (LIML) estimator. The last chapter of the thesis is an application of regularization to the estimation of labor supply elasticities using pseudo panel data models. In a dynamic panel data model, the number of moment conditions increases rapidly with the time dimension, resulting in a large dimensional covariance matrix of the instruments. Inverting this large dimensional matrix to compute the estimator leads to poor finite sample properties. To address this issue, we propose a regularization approach to the estimation of such models where a generalized inverse of the covariance matrix of the intruments is used instead of its usual inverse. Three regularization schemes are used : Principal components, Tikhonov which is based on Ridge regression (also called Bayesian shrinkage) and finally Landweber Fridman which is an iterative method. All these methods involve a regularization parameter which is similar to the smoothing parameter in nonparametric regressions. The finite sample properties of the regularized estimator depends on this parameter which needs to be selected between many potential values. In the first chapter (co-authored with Marine Carrasco), we propose the regularized GMM estimator of the dynamic panel data models. Under double asymptotics, we show that our regularized estimators are consistent and asymptotically normal provided that the regularization parameter goes to zero slower than the sample size goes to infinity. We derive a data driven selection of the regularization parameter based on an approximation of the higher-order Mean Square Error and show its optimality. The simulations confirm that regularization improves the properties of the usual GMM estimator. As empirical application, we investigate the effect of financial development on economic growth. In the second chapter (co-authored with Marine Carrasco), we propose the regularized LIML estimator of the dynamic panel data model. The LIML estimator is known to have better small sample properties than the GMM estimator but its implementation becomes problematic when the time dimension of the panel becomes large. We derive the asymptotic properties of the regularized LIML under double asymptotics. A data-driven procedure to select the parameter of regularization is proposed. The good performances of the regularized LIML estimator over the usual (not regularized) LIML estimator, the usual GMM estimator and the regularized GMM estimator are confirmed by the simulations. In the last chapter, I consider the estimation of the labor supply elasticities of Canadian men through a regularization approach. Unobserved heterogeneity and measurement errors on wage and income variables are known to cause endogeneity issues in the estimation of labor supply models. A popular solution to the endogeneity issue is to group data in categories based on observable characteristics and compute the weighted least squares at the group level. This grouping estimator has been proved to be equivalent to instrumental variables (IV) estimator on the individual level data using group dummies as intruments. Hence, in presence of large number of groups, the grouping estimator exhibites a small bias similar to the one of the IV estimator in presence of many instruments. I take advantage of the correspondance between grouping estimators and the IV estimator to propose a regularization approach to the estimation of the model. Using this approach leads to wage elasticities that are substantially different from those obtained through grouping estimators.



Essays On Spatial Dynamic Panel Data Model Theories And Applications


Essays On Spatial Dynamic Panel Data Model Theories And Applications
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Author : Jihai Yu
language : en
Publisher:
Release Date : 2007

Essays On Spatial Dynamic Panel Data Model Theories And Applications written by Jihai Yu and has been published by this book supported file pdf, txt, epub, kindle and other format this book has been release on 2007 with categories.


This dissertation is composed of three papers about the theories and application of spatial dynamic panel data model with fixed effects. The first paper investigates the asymptotic properties of quasi-maximum likelihood estimators for spatial dynamic panel data with fixed effects when both the number of individuals n and the number of time periods T are large. We consider the case where T is asymptotically large relative to n, the case where T is asymptotically proportional to n, and the case where n is asymptotically large relative to T. In the case where T is asymptotically large relative to n, the estimators are nT consistent and asymptotically normal, with the limit distribution centered around 0. When n is asymptotically proportional to T, the estimators are nT consistent and asymptotically normal, but the limit distribution is not centered around 0; and when n is large relative to T, the estimators are consistent with rate T, and have a degenerate limit distribution. We also propose a bias correction for our estimators. We show that when T grows faster than n1/3, the correction will asymptotically eliminate the bias and yield a centered confidence interval. The second paper covers a nonstationary case where there are units roots in the data generating process. When not all the roots in the DGP are unity, the estimators rate of convergence will be the same as the stationary case, and the estimators can be asymptotically normal. But for the estimators' asymptotic variance matrix, it will be driven by the nonstationary component into a singular matrix. Consequently, a linear combination of the spatial and dynamic effects can converge with a higher rate. We also propose a bias correction for our estimators. We show that when T grows faster than n 1/3, the correction will asymptotically eliminate the bias and yield a centered confidence interval. In the third paper, a spatial dynamic panel data approach is proposed to study growth convergence in the U.S. economy. In neoclassical model, countries are assumed to be independent from each other, which does not hold in the real world. We introduce technological spillovers and factor mobility into the neoclassical framework, showing that the convergence rate is higher and there is spatial correlation. Exploiting annual data on personal state income spanning period 1961-2000 for the 48 contiguous states, we obtain empirical results consistent with the model prediction.



Essays On Quantile Regression For Dynamic Panel Data Models


Essays On Quantile Regression For Dynamic Panel Data Models
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Author :
language : en
Publisher:
Release Date : 2009

Essays On Quantile Regression For Dynamic Panel Data Models written by and has been published by this book supported file pdf, txt, epub, kindle and other format this book has been release on 2009 with categories.




Mostly Panel Econometrics


Mostly Panel Econometrics
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Author : Ovidijus Stauskas
language : en
Publisher:
Release Date : 2022

Mostly Panel Econometrics written by Ovidijus Stauskas and has been published by this book supported file pdf, txt, epub, kindle and other format this book has been release on 2022 with Bootstrap (Statistics) categories.


This thesis consists of five chapters which focus on panel data theory. Four of them analyze explicit panel data models and one chapter deals with time series forecasting model, where external panel data help us estimate unobserved explanatory variables. The broad topics discussed in the thesis include i) simplification of distribution of a statistical test under double asymptotics, ii) elimination of fixed effects and bias correction in dynamic panels, iii) accounting for cross-section dependence and estimation of latent factors when they can be non-stationary and iv) usage of latent factors to improve out-of-sample forecasts and testing competing forecast models. In Chapter I, we re-visit a problem posed by Phillips and Lee (2015, Econometric Reviews). They considered a simple bivariate vector autoregression (VAR), where both series exhibited different degrees of non-stationarity: near unit root and mild explosiveness. While one is interested in testing whether both series are in the lower vicinity of unit root and share the same persistence features, unfortunately, Wald test statistic degenerates under the null. We re-consider this setup in the context of panel data, where we use extra observations from the cross-section to simplify asymptotic distributions in order to obtain chi-square-based inference.??Chapter II looks into very popular factor augmented linear forecast models and tests to evaluate out-of-sample forecasting accuracy. In large macroeconomic datasets, various series tend to co-move together and it is modelled by employing a small number of latent factors (see e.g. Stock and Watson, 1999 and 2002). Instead of using a large number of available variables, researchers reduce the dataset dimension by estimating the driving factors and use those estimates directly. We further explore two tests of equal forecasting accuracy for nested models to investigate if factor augmented model outperforms parsimonious model with known set of variables. Unlike Gonçalves el. al (2017, Journal of Econometrics), where the factors are estimated using Principal Components (PC) under presumably known number of factors, we employ Common Correlated Effects (CCE) estimator which is very user friendly and employs a common thematic block structure of large macro datasets. Factors are estimated as block averages to proxy the common underlying information given by factors.??We continue discussing latent factors in Chapter III and Chapter IV. Here we focus on panel data, where unobserved factors model strong cross-section dependence among the panel units and possible endogeneity within the individual time series. Pesaran (2006, Econometrica) suggested solving these issues by augmenting the regression with cross-section averages of the dependent and independent variables. This is CCE estimator. While very simple, pooled version of CCE (CCEP) is asymptotically biased under homogeneous slopes, unless the number of individuals dominates the length of time series in the panel. Moreover, typically the bias is inestimable and analytic correction is not possible. In Chapter III, we analyze the properties of a simple 'pairs' bootstrap algorithm discussed in Kapetanios (2008, Econometrics Journal) in the context of CCE and develop bootstrap-based bias correction procedure. In Chapter IV, we continue the study of Westerlund (2018, Econometrics Journal), where CCE was extended to non-stationary factors of a very general type. In the latter study, however, only CCEP under homogeneous slopes was examined, but we extend the analysis to heterogeneous slopes and explore the properties of the mean group (CCEMG) estimator in order to further model unobserved heterogeneity.??The thesis concludes with Chapter V, where we re-visit at a classical problem in dynamic panels with fixed effects known as Nickel Bias. De-meaning the data to purge individual-specific effects in dynamic panels makes the model errors correlated, and the bias accumulates if the time dimension is large. On the other hand, if we estimate the fixed effects, we run into incidental parameter problem. Bai (2013, Econometrica) considered the so-called Factor Analytical (FA) estimator, which circumvents these issues by estimating the sample variance of individual effects rather than the effects themselves. In the latter study, panel AR(1) model with autoregressive parameter in the stationary region was explored. We extend this to autoregressive coefficient tending to unity and incidental trends, similarly to Moon and Phillips (2004, Econometrica) in order to account for trending and drifting variables.



Three Essays On Instrumental Variables Estimators


Three Essays On Instrumental Variables Estimators
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Author : Rodrigo A. Alfaro
language : en
Publisher:
Release Date : 2008

Three Essays On Instrumental Variables Estimators written by Rodrigo A. Alfaro and has been published by this book supported file pdf, txt, epub, kindle and other format this book has been release on 2008 with categories.


Abstract: This dissertation is a collection of three independent essays in theoretical and applied econometrics, organized in the form of three chapters. In the first chapter, I analyze the properties of the Symmetrically Normalized Instrumental Variables estimator (SN1V), proposed by Alonso-Borrego and Arellano (1999), using Edgeworth expansions. I find that this estimator is second order biased. In an empirical application, I compare the results of SNIV with Two Stage Least Squares and Limited Information Maximum Likelihood estimators. The second chapter is an empirical application of a Dynamic Panel Data model with a large number of firms and periods. With a firm level panel data set from Chile, I estimate an investment equation using the Within Groups estimator as well as the Arellano and Bond (1991) Generalized Method of Moments estimator (AB/GMM). The specification of the equation follows Gilchrist and Himmelberg (1998), and the results show that investment is positively related to the marginal profit of capital and liquidity of the firms. Moreover, I generalize Lemma 2 in Alvarez and Arellano (2003), showing that when the maximum number of lags used as instruments is truncated, then the AB/GMM estimator is asymptotically unbiased. The third chapter studies the properties of Instrumental Variables Estimators in situations where the error terms are heteroskedastic and there are many instrumental variables. In particular, I compare the performance of the Robust Limited Information Maximum Likelihood estimator proposed by Hausman, Newey, Woutersen, Chao and Swanson (2007) with the robust version of the Jackknife Instrumental Variable Estimator proposed by Angrist, Imbens and Krueger (1999). Theoretical results are presented for the robust t -statistics.



Three Essays On Trade Growth And Capital Mobility Across Countries


Three Essays On Trade Growth And Capital Mobility Across Countries
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Author : Tzvetana Rakovski
language : en
Publisher:
Release Date : 2009

Three Essays On Trade Growth And Capital Mobility Across Countries written by Tzvetana Rakovski and has been published by this book supported file pdf, txt, epub, kindle and other format this book has been release on 2009 with Capital movements categories.




The Econometrics Of Panel Data


The Econometrics Of Panel Data
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Author : Lászlo Mátyás
language : en
Publisher: Springer Science & Business Media
Release Date : 2008-04-06

The Econometrics Of Panel Data written by Lászlo Mátyás and has been published by Springer Science & Business Media this book supported file pdf, txt, epub, kindle and other format this book has been release on 2008-04-06 with Business & Economics categories.


This restructured, updated Third Edition provides a general overview of the econometrics of panel data, from both theoretical and applied viewpoints. Readers discover how econometric tools are used to study organizational and household behaviors as well as other macroeconomic phenomena such as economic growth. The book contains sixteen entirely new chapters; all other chapters have been revised to account for recent developments. With contributions from well known specialists in the field, this handbook is a standard reference for all those involved in the use of panel data in econometrics.