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An Akaike-type information criterion for model selection under inequality constraints

机译:不等式约束下模型选择的Akaike型信息准则

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The Akaike information criterion for model selection presupposes that the parameter space is not subject to order restrictions or inequality constraints. Anraku (1999) proposed a modified version of this criterion, called the order-restricted information criterion, for model selection in the one-way analysis of variance model when the population means are monotonic. We propose a generalization of this to the case when the population means may be restricted by a mixture of linear equality and inequality constraints. If the model has no inequality constraints, then the generalized order-restricted information criterion coincides with the Akaike information criterion. Thus, the former extends the applicability of the latter to model selection in multi-way analysis of variance models when some models may have inequality constraints while others may not. Simulation shows that the information criterion proposed in this paper performs well in selecting the correct model.
机译:用于模型选择的Akaike信息标准假定参数空间不受顺序限制或不等式限制。 Anraku(1999)提出了此标准的改进版本,称为有序限制信息标准,用于在单因素方差分析为单向方差模型时选择模型。我们建议将其推广到总体均值可能受到线性等式和不等式约束的混合约束的情况。如果模型没有不等式约束,则广义的限序信息准则与Akaike信息准则一致。因此,当某些模型可能具有不等式约束而其他模型可能没有时,前者将后者的适用性扩展到方差模型的多方分析中的模型选择。仿真表明,本文提出的信息准则在选择正确的模型方面表现良好。

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