11.8 Model Selection

In the Gauss-Markov setup one is often concerned with selecting a model from an appropriate class of candidate models. There are a number of methods for model selection and properties of these methods have been investigated by many authors, but we focus on a few of them instead of describing all. Consider the general framework Y = μ + ε, where Y is the n × 1 response vector, μ is the mean vector, and ε is the vector of iid errors with mean 0 and variance σ2. We assume that there is a class of candidate models Xkβk:k=1,,Ksi682_e for describing μ, where Xk is a known n × pk matrix of rank pk and βk is unknown.

11.8.1 An Overview ...

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