How to Do xtabond2 David Roodman Research Fellow

Slides:



Advertisements
Similar presentations
Introduction Describe what panel data is and the reasons for using it in this format Assess the importance of fixed and random effects Examine the Hausman.
Advertisements

Financial Econometrics
Dynamic panels and unit roots
Econometric Analysis of Panel Data Panel Data Analysis: Extension –Generalized Random Effects Model Seemingly Unrelated Regression –Cross Section Correlation.
Income and Price Elasticities of Croatian Trade – A Panel Data Approach by Vida Bobic Discussant: K. Zigic CERGE-EI Prague, Czech Republic The Fifteenth.
A Generalized Nonlinear IV Unit Root Test for Panel Data with Cross-Sectional Dependence Shaoping Wang School of Economics, Huazhong University of Science.
Dynamic Panel Data: Challenges and Estimation Amine Ouazad Ass. Prof. of Economics.
Generalized Method of Moments: Introduction
There are at least three generally recognized sources of endogeneity. (1) Model misspecification or Omitted Variables. (2) Measurement Error.
MACROECONOMETRICS LAB 2 – SIMULTANEOUS MODELS. ROADMAP What do we need simulteneous models for? – What you know from the lecture – Empirical side (w/o.
Econometric Analysis of Panel Data Random Regressors –Pooled (Constant Effects) Model Instrumental Variables –Fixed Effects Model –Random Effects Model.
1 Do Host Country Factors Affect The Impact Of Foreign Direct Investment On Economic Growth? Edna Solomon 27 November, 2006 ESDS International Annual Conference.
Instrumental Variables Estimation and Two Stage Least Square
Introduction to Applied Spatial Econometrics Attila Varga DIMETIC Pécs, July 3, 2009.
MACROECONOMETRICS LAB 3 – DYNAMIC MODELS.
HMM-BASED PATTERN DETECTION. Outline  Markov Process  Hidden Markov Models Elements Basic Problems Evaluation Optimization Training Implementation 2-D.
Economics Prof. Buckles1 Time Series Data y t =  0 +  1 x t  k x tk + u t 1. Basic Analysis.
Econometric Analysis of Panel Data Dynamic Panel Data Analysis –First Difference Model –Instrumental Variables Method –Generalized Method of Moments –Arellano-Bond-Bover.
Prof. Dr. Rainer Stachuletz
Econometric Analysis of Panel Data Instrumental Variables in Panel Data –Assumptions of Instrumental Variables –Fixed Effects Model –Random Effects Model.
12.3 Correcting for Serial Correlation w/ Strictly Exogenous Regressors The following autocorrelation correction requires all our regressors to be strictly.
Sustainability of economic growth and inequality in incomes distribution Assistant, PhD, BURZ R ă zvan-Dorin West University of Timisoara, Romania Lecturer,
GRA 6020 Multivariate Statistics Regression examples Ulf H. Olsson Professor of Statistics.
Econometric Analysis of Panel Data Lagged Dependent Variables –Pooled (Constant Effects) Model –Fixed Effects Model –Random Effects Model –First Difference.
Part 9: GMM Estimation [ 1/57] Econometric Analysis of Panel Data William Greene Department of Economics Stern School of Business.
Christopher Dougherty EC220 - Introduction to econometrics (chapter 12) Slideshow: autocorrelation, partial adjustment, and adaptive expectations Original.
12 Autocorrelation Serial Correlation exists when errors are correlated across periods -One source of serial correlation is misspecification of the model.
What does it mean? The variance of the error term is not constant
ENERGY DEMANDS IN INDUSTRIAL SECTORS AGF Conferences Friday 30 th November, 2007 Berlin.
Random Regressors and Moment Based Estimation Prepared by Vera Tabakova, East Carolina University.
Spatial and non spatial approaches to agricultural convergence in Europe Luciano Gutierrez*, Maria Sassi** *University of Sassari **University of Pavia.
Various topics Petter Mostad Overview Epidemiology Study types / data types Econometrics Time series data More about sampling –Estimation.
Center for Sustainable Transportation Infrastructure Harmonization of Friction Measuring Devices Using Robust Regression Methods Samer Katicha 09/09/2013.
Maximum Likelihood Estimation Methods of Economic Investigation Lecture 17.
Settlement in Merger Cases: Remedies and Litigation Andreea Cosnita (Paris X Nanterre) Discussant: Jo Seldeslachts (WZB-Berlin)
Generalised method of moments approach to testing the CAPM Nimesh Mistry Filipp Levin.
Instrumental Variables: Introduction Methods of Economic Investigation Lecture 14.
Problems with the Durbin-Watson test
1 Prof. George E. Halkos & Epameinondas A. Paizanos The Effect of Government Expenditure on the Environment Prof. George Halkos & Mr Epameinondas Paizanos.
David Roodman (2008) Presentation by Faraharivony Rakotomamonjy and Estelle Zemmour.
Spatial Econometric Analysis Using GAUSS 10 Kuan-Pin Lin Portland State University.
Dynamic Models, Autocorrelation and Forecasting ECON 6002 Econometrics Memorial University of Newfoundland Adapted from Vera Tabakova’s notes.
Natural Resources, Energy Supply and Economic Growth: What Does Diversification Achieve? Bankole Fred Olayele.
1 Empirical methods: endogeneity, instrumental variables and panel data Advanced Corporate Finance Semester
Empirical Evidence on Indirect Spillover Effects BRICs AND THE LOW INCOME COUNTRIES: Aysu INSEL Istanbul Kemerburgaz University, Faculty of Economics and.
IV Estimation Instrumental Variables. Implication Estimate model by OLS and by IV, and compare estimates If But test INDIRECTLY using Wu-Hausman.
Endogeneity in Econometrics: Simultaneous Equations Models Ming LU.
Esman M. Nyamongo Central Bank of Kenya
GMM Estimation- class notes
Luciano Gutierrez*, Maria Sassi**
Dynamic Models, Autocorrelation and Forecasting
Instrumental Variable (IV) Regression
Econometric methods of analysis and forecasting of financial markets
Simultaneous equation system
Econometric Analysis of Panel Data
STOCHASTIC REGRESSORS AND THE METHOD OF INSTRUMENTAL VARIABLES
CHAPTER 16 ECONOMIC FORECASTING Damodar Gujarati
Instrumental Variables and Two Stage Least Squares
How to Do xtabond2 David Roodman Research Fellow
Chapter 12 – Autocorrelation
Instrumental Variables and Two Stage Least Squares
Migration and the Labour Market
Instrumental Variables
Instrumental Variables and Two Stage Least Squares
Academy of Economic Studies, Bucharest Doctoral School of Finance and Banking AN ANALYSIS OF THE CONDITIONING ROLE OF FINANCIAL DEVELOPMENT ON THE IMPACT.
By Eni Sumarminingsih, Ssi, MM
Linear Panel Data Models
Instrumental Variables Estimation and Two Stage Least Squares
Esman M. Nyamongo Central Bank of Kenya
Innovation and Employment: Evidence from Italian Microdata
Presentation transcript:

How to Do xtabond2 David Roodman Research Fellow Center for Global Development

xtabond2 in a nutshell First ado version in 11/03, Mata version in 11/05. Extends built-in xtabond, to do system GMM, Windmeijer correction, revamped syntax Estimators designed for Small-T, large-N panels One dependent variable Dynamic Linear Regressors endogenous and predetermined Fixed individual effects Arbitrary autocorrelation and het. within panels General application

Outline of paper Introduction to linear GMM Motivation and design of difference and system GMM xtabond2 syntax

Black box problem Canned & sophisticated procedure Dangers in hidden sophistication finite sample ≠ asymptotic Users should understand motivation and limits of estimator

Linear GMM in one slide

Linear GMM and 2SLS

Linear GMM in another slide (Holtz-Eakin, Newey, and Rosen 1988)

Difference and system GMM

Problem: Dynamic Panel Bias (Nickell 1981)

Partial solution: OLS in differences

Problem: Other endogeneity

Solution: Instrument with lags (2SLS) (Anderson and Hsiao 1981)

Problem: Inefficiency

Solution: GMM & GMM-style instruments (Holtz-Eakin, Newey, and Rosen 1988)

Problem: Autocorrelation

Solution: Restrict to deeper lags

Arellano-Bond AR() test

Problem: Weak instruments

Solution: Instead of purging fixed effects, find instruments orthogonal to them (Arellano and Bover 1995)

Relationship among moments (Tue Gorgens)

Problem: Two-step errors too small

Problem, cont’d

Solution: finite-sample correction (Windmeijer 2005)

Problem: too many instruments

Solution: consider limiting instruments

xtabond2 syntax Z Y X “GMM-style” Classic

Examples

Examples, cont’d

Run times for bbest (seconds) 700 MHz PC xtabond2 ado 57 xtabond2 Mata, favoring space 14 xtabond2 Mata, favoring speed 11 DPD for Ox 3