In this paper, a linear model selection procedure based on M-estimation is proposed, which includes many classical model selection criteria as its special cases. It is shown that the proposed criterion is strongly consistent under certain mild conditions, for instance without assuming normality of the distribution of the random errors. The results from a simulation study are also presented.
CITATION STYLE
Wu, Y., & Zen, M. M. (1999). A strongly consistent information criterion for linear model selection based on M-estimation. Probability Theory and Related Fields, 113(4), 599–625. https://doi.org/10.1007/s004400050219
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