NCRM videos



What is Generalized Method of Moments? by Alastair Hall

26-08-2014

Generalized Method of Moments (GMM) provides a computationally convenient method for estimating the parameters of statistical models based on the information in population moment conditions. This structure has made it very popular in econometrics because competing economic theories often imply that economic variables satisfy different sets of population moment conditions. The specific form of these population moment conditions depends on the context but the generic form of the GMM estimator is the same in each case. This flexibility means that GMM has been implemented in very diverse areas spanning macroeconomics, finance, agricultural economics, environmental economics and labour economics. Its widespread use in econometrics has both stimulated and been facilitated by the development of numerous statistical inference techniques based on GMM estimators. These inference techniques allow researchers, inter alia, to test hypotheses about the parameters of the econometric model and also to test whether the population moment conditions are consistent with the data. In addition, GMM subsumes many other well-known estimators, such as least squares, instrumental variables and maximum likelihood. As a result, GMM provides a convenient framework for considering general aspects of estimation and inference in statistics, and, in many ways, is becoming the common language of econometric dialogue.