An Introduction to Modern Econometrics Using Stata: Reviews

This book provides an excellent resource for both teaching and learning modern microeconometric practice, using the most popular software package in this area. The coverage includes discrete choice models and models for panel data, as well as linear regression and instrumental variables methods. I particularly like the material on handling large datasets and developing efficient programs within Stata, which provide the reader with an invaluable introduction to good practice in empirical research.

Prof. Steve Bond
Nuffield College, Oxford
and Institute for Fiscal Studies (IFS) London


Kit Baum provides students and researchers a hands-on guide to modern econometric techniques by means of many well-documented examples in Stata. The examples are also useful templates for those who need to write Stata routines for their own work. Treatment and transformation of cross-section, time-series, and panel data are carefully explained. The coverage of the text is broad and up to date. An Introduction to Modern Econometrics Using Stata is a valuable companion to undergraduate- and graduate-level econometric textbooks.

Serena Ng
Department of Economics, University of Michigan


Christopher Baum’s An Introduction to Modern Econometrics Using Stata is probably the only econometrics text published to date that pays serious attention to reproducibility of research and systematic data validation using Stata’s data audit commands along with do-file and programming capabilities. Economic and financial consultants will find this text to be an invaluable guide to using Stata for creating reproducible, error-free data and econometric analysis, as well as quality graphic presentations. The book is comprehensive and easy to follow, with substantive coverage of econometric theory and applications using the full array of Stata’s capabilities. This text should serve as an excellent learning and reference guide for every consultant.

Zaur Rzakhanov, Ph.D.
Associate, Analysis Group Inc.
Boston, Massachusetts


This book is a wonderful complement to the Stata technical manuals. It provides a wealth of practical tips and sample applications that help the intermediate-level Stata user advance in making the most efficient use of Stata. It is thoughtfully organized along the lines of an econometrics textbook, allowing practitioners to find relevant and useful commands, procedures, and examples by topics that are familiar and immediate. It also includes a most helpful appendix for novice programmers that will expedite their development into proficient Stata programmers. This book is a must-have reference for any organization that needs to train practitioners of econometrics in the use of Stata.

Peter Boberg
CRA International


For too long there has been a hole in the field between econometrics textbooks, which focus on theory but give little practical guidance to the day-to-day realities of economic research, and software manuals, which provide detail but little analytical context. Researchers, analysts, and students have no single source to turn to and often waste valuable time and effort reinventing the wheel. This book brings it all together and gives the researcher a huge step up on the learning curve. It perhaps should have been subtitled “How to perform high-quality empirical research using Stata.” It addresses topics in the order that real-world research is performed, beginning with the data-management and quality-control issues that a researcher must contend with every day and then proceeding to the econometric tools used for most empirical analyses. A researcher or a research analyst reading this book would learn insights and tricks of the trade that would otherwise take years to accumulate. Common errors (such as those resulting from many-to-many merges) are pointed out. Useful tips (such as the use of local macros) are discussed. Efficient and robust programming is encouraged throughout. This book should be required reading for any empirical researcher or research analyst interested in developing a high-quality research process.

Dr. Paul Liu
The Brattle Group