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Weighted-average least squares: Improvements and extensions

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Abstract

This article presents version 3.0 of the wals command, which implements the weighted-average least-squares estimator of Magnus, Powell, and Prüfer (2010, Journal of Econometrics 154: 139–153). Version 3.0 improves earlier versions of wals in several respects: a new syntax supporting factor variables, time-series operators, and weights; an enlarged set of prior distributions; extended quadrature methods for computing the posterior mean; new plugin estimates of the sampling moments; simulation-based confidence intervals; and other options to control accuracy, computational speed, and output of wals. We also offer three new postestimation commands: the predict command associated with wals; the lcwals command, which estimates linear combinations of the parameters; and the margwals command, which estimates smooth, possibly nonlinear functions of the parameters at given values of regressors. Finally, we compare our new commands with two suites of commands for tackling issues of model uncertainty.

Original languageEnglish
Pages (from-to)587-626
Number of pages40
JournalStata journal
Volume25
Issue number3
Early online date26 Aug 2025
DOIs
Publication statusPublished - Sept 2025

Bibliographical note

Publisher Copyright:
© 2025 StataCorp LLC

Keywords

  • Bayesian shrinkage
  • inference
  • lcwals
  • linear model
  • margwals
  • postestimation
  • st0239_1
  • wals
  • wals postestimation
  • weighted-average least squares

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