Consistent Linear Model Selection

@inproceedings{ZhaoConsistentLM,
  title={Consistent Linear Model Selection},
  author={Meng Zhao and K. B. Kulasekera}
}
We examine the penalty term in linear model selection using penalized least squares. The rate of divergence of the penalty term for consistent model selection is discussed under a general error structure. 

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