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  • Coming soon
Publisher:
Cambridge University Press
Expected online publication date:
March 2026
Print publication year:
2026
Online ISBN:
9781009275354

Book description

Empirical Bayes methods as envisioned by Herbert Robbins are becoming an essential element of the statistical toolkit. In Empirical Bayes: Tools, Rules, and Duals, Roger Koenker and Jiaying Gu offer a unified view of these methods. They stress recent computational developments for nonparametric estimation of mixture models, not only for the traditional Gaussian and Poisson settings, but for a wide range of other applications. Providing numerous illustrations where empirical Bayes methods are attractive, the authors give a detailed discussion of computational methods, enabling readers to apply the methods in new settings.

Reviews

‘For over a century, most statisticians have known that, in parametric inference problems, Bayes's theorem provides the best achievable informational summary of the data if certain prior information was available. For nearly that long, some statisticians have sought to extract sufficient information from the same data to provide a reasonable substitute for the needed prior information, in effect allowing the analyst to reach near perfection without making unreasonable prior assumptions. Koenker and Gu summarize and advance this program with a welcome display of what may be termed these days ‘Natural Intelligence.'

Stephen M. Stigler - University of Chicago

‘As the renowned scholar Daniel McFadden once put, it is easy nowadays to be swamped in data, but starved for knowledge. Proper understanding requires adequate tools, rules and (possibly?) duals! Roger Koenker and Jiaying Gu elegantly present and lucidly discuss some of those tools and rules from the viewpoint of two leading econometricians. The book interlaces historical context, technical explanations and practical applications on Empirical Bayes protocols in an entertaining and clear manner. I am sure this book will become an important reference and a guide for further ideas on the theme.'

Aureo de Paula - University College London

‘This insightful book summarizes and extends the fruits of a long-term collaboration between two world-class statisticians and econometricians on the consequences of heterogeneity among agents for inference and decision. It illuminates the foundations of many conventional estimators and extends their range. It develops new methods and presents user-friendly software to implement them. It offers many worked prototypical examples. This masterful work will become an essential toolkit for scholars interested in understanding and characterizing the variability that characterizes modern societies.'

James J. Heckman - University of Chicago

‘Koenker and Gu take readers through an exhilarating journey from the foundational developments of empirical Bayes methods to econometric applications and computational aspects. They address situations involving data on large numbers of anonymous subjects with heterogeneous characteristics of interest, the kind that has become ubiquitous in modern econometrics. Written with clarity and insight, this monograph is both intellectually rigorous and highly readablea must-read for anyone interested in the measurement of heterogeneity. It is sure to become a classic.'

Manuel Arellano - Professor of Economics, CEMFI, Madrid

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