Study on the penalty functions of model selection criteria

Authors

  • Warangkhana Keerativibool Department of Mathematics and Statistics, Faculty of Science, Thaksin University, Phatthalung 93110 Thailand.

Keywords:

model selection, penalty function, probability of overfitting, signal-to-noise ratio, observed L2 efficiency

Abstract

The aim of this paper is to study the penalty functions of the well-known model selection criteria, AIC , BIC , and KIC , which can unify their formulas as APIC\alpha = log(\hat{\sigma}2)+\alpha(p+1)/n, called Adjusted Penalty Information Criterion. The appropriate value of \alpha for APIC\alpha has been found to reduce the probabilities of over- and underfitting and also to overcome the weak signal-to-noise ratio. The value of \alpha is selected based on four measurements: the probability of over- and underfitting, the signal-to-noise ratio, the probability of order selected, and the observed L2 efficiency. Performance of APIC\alpha is examined by theoretical and extensive simulation study. The theoretical results show that, the probability of overfitting tends to zero and the signal-to-noise ratio tends to strong if the value of \alpha tends to infinity. However, the simulation results show that, when the true model is weakly identifiable, the small value of \alpha gives a high probability of correct order being selected. But, if the true model is very difficult to detect, the observed L2 efficiency is a meaningful measurement than the probability of order selected. The observed L2 efficiency suggests the large value of \alpha causes the high efficiency of APIC\alpha which indicates that the correct model is also the closet model, except when the true model can be specified more easily and sample sizes are moderate to large, then the small value of \alphais preferable. For the strongly identifiable true model, the large value of \alphaperforms well, whereas if the regression coefficients are not large enough and the sample sizes are small to moderate, the value of \alpha should be moderate.

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How to Cite

Keerativibool, W. (2015). Study on the penalty functions of model selection criteria. Thailand Statistician, 12(2), 161–178. Retrieved from https://ph02.tci-thaijo.org/index.php/thaistat/article/view/34195

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