
AbstractModel averaging has become a popular method of estimation, following increasing evidence that model selection and estimation should be treated as one joint procedure. Weighted‐average least squares (WALS) is a recent model‐average approach, which takes an intermediate position between frequentist and Bayesian methods, allows a credible treatment of ignorance, and is extremely fast to compute. We review the theory of WALS and discuss extensions and applications.
Least squares, Priors, Frequentist versus Bayesian, Computing time, Model averaging
Least squares, Priors, Frequentist versus Bayesian, Computing time, Model averaging
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