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## This page provides a list of the Stata do and data files needed for each chapter of Empirical Development Economics

Chapter 1 An Introduction to Empirical Development Economics

Stata data file ‘hjones.dta’ and Stata Do file ‘Hall and Jones_1’

Chapter 2 The Linear Regression Model and the OLS Estimator

No Stata files required for this Chapter

Chapter 3 Using and Extending the Simple Regression Model

Stata data file ‘Labour_force_SA_SALDRU_1993.dta’ for the micro analysis.

Stata data file ‘Macro_1980_200_PENN61.dta’ for the macro analysis

Chapter 4 The Distribution of the OLS Estimators and Hypothesis Testing

Stata data file ‘Labour_force_SA_SALDRU_1993.dta’ for the micro analysis.

Stata data file ‘Macro_1980_200_PENN61.dta’ for the macro analysisOLS

Chapter 5 The Determinants of Earnings and Productivity

Stata data file ‘Labour_force_SA_SALDRU_1993.dta’ for the micro analysis.

Stata data file ‘Macro_1980_200_PENN61.dta’ for the macro analysis

Chapter 6 Modelling Growth with Time Series Data

The Stata do file ‘Chapter_6_Solow_Model_ Argentina_do‘ is the code you are given for the exercise for this chapter.

Stata data file ‘Macro_PEBLIF’.

Chapter 7 The Implications of Variables Having a Unit Root

Stata data file ‘Macro_PEBLIF’.

Chapter 8 Exogenous and Endogenous Growth

Stata data file ‘Macro_PEBLIF’.

Chapter 9 Panel Data: An Introduction

Stata data file ‘Ghana_Firms_JDE04’

Chapter 10 Panel Estimators: POLS, RE, FE, FD

Stata data file ‘Ghana_Firms_JDE04’

Chapter 11 Instrumental Variables and Endogeneity

Stata data file ‘Ghana_Tan_LF_04-05’

Chapter 12 The Progamme Evaluation Approach to Development Policy

No Stata files required for this Chapter

Chapter 13 Models, Experiments and Calibration in Development Policy Analysis

Stata data file ‘Cocoa_Farms.dta’

Stata data file ‘Ghana_Firms_JDE04’

Chapter 14 Measurement, Models and Methods for Understanding Poverty

Stata data file ‘Ghana_Tan_LF_04-05’

Chapter 15 Maximum Likelihood Estimation

Stata do file ‘OLS_ml.do’

Chapter 16 Modeling Choice: The LPM, Probit and Logit Models

Stata data file ‘Labour_force_SA_SALDRU_1993.dta’ for the micro analysis.

Chapter 17: Using Logit and Probit Models for Unemployment and School Choice

Stata data file ‘Indian_Schools_Pupil.dta’

Chapter 18 Corner Solutions: Modeling Investing in Children and by Firms

Stata data file ‘Educ_Share_India’

Chapter 19: An introduction to structural modelling in development economics

Stata do file ‘EthiopiaAnalysis.do’

Chapter 20 Structural methods and the return to education

Stata do file ‘SimulateData’

Stata do file ‘SchoolingML’

Stata data file ‘SmallILFS_adj’

Chapter 21 Sample Selection: Modeling incomes where occupation is chosen

No Stata files required for this Chapter

Chapter 22 Programme Evaluation: Regression Discontinuity and Matching

The Stata Data and Do File that generate the results shown inthe exercise are given for this chapter.

Stata Do file: Exercise_Cahpter_22.do

Stata Data File: Ethiopia_food_aid.dta

Chapter 23 Heterogeneity, Selection, and the Marginal Treatment Effect (MTE)

Stata data file ‘SmallILFS2’

Chapter 24 Estimation of Dynamic Effects with Panel Data

Stata data file ‘Ghana_Firms_JDE04’

Chapter 25 Modeling the Effects of Aid and the Determinants of Growth

Stata do file ‘Chapter25_PWT61_based’

Stata data file ‘Macro_PEBLIF’

Chapter 26 Understanding Technology Using Long Panels

Stata data file ‘Macro_Manufacturing.dta’

Chapter 27 Cross-section Dependence and Nonstationary Data

Stata data file ‘Macro_PEBLIF_LT’

Chapter 28 Macro Production Functions for Manufacturing and Agriculture

The data and do files that enable you to replicate Table 28.5 are:

‘OBES No Mangos in the Tundra.do’

‘agri_data128.dta’

There are two ado files you will need when running the ‘OBES No Mangos in the Tundra.do’ do file these are:

‘outreg.ado’ which is the old version of the Stata program for presenting data and

‘xtmg.ado’ which is the Stata instructions for doing the mean group estimators.

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