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Model selection in the presence of incidental parameters

机译:存在附带参数的模型选择

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This paper considers model selection in panels where incidental parameters are present. Primary interest centers on selecting a model that best approximates the underlying structure involving parameters that are common within the panel. It is well known that conventional model selection procedures are often inconsistent in panel models and this can be so even without nuisance parameters. Modifications are then needed to achieve consistency. New model selection information criteria are developed here that use either the Kullback-Leibler information criterion based on the profile likelihood or the Bayes factor based on the integrated likelihood with a bias-reducing prior. These model selection criteria impose heavier penalties than those associated with standard information criteria such as AIC and BIC. The additional penalty, which is data-dependent, properly reflects the model complexity arising from the presence of incidental parameters. A particular example is studied in detail involving lag order selection in dynamic panel models with fixed effects. The new criteria are shown to control for over/under-selection probabilities in these models and lead to consistent order selection criteria. (C) 2015 Elsevier B.V. All rights reserved.
机译:本文考虑存在偶然参数的面板中的模型选择。主要兴趣集中在选择一个最能逼近涉及面板内常见参数的基础结构的模型上。众所周知,传统的模型选择程序通常在面板模型中是不一致的,即使没有令人讨厌的参数也是如此。然后需要进行修改以实现一致性。在此开发了新的模型选择信息标准,该标准使用基于轮廓似然的Kullback-Leibler信息标准或基于具有降低了先验的综合似然的贝叶斯因子。这些模型选择标准比与标准信息标准(例如AIC和BIC)相关的惩罚更高。依赖于数据的额外损失适当地反映了由于附带参数的存在而引起的模型复杂性。详细研究了一个特定示例,该示例涉及具有固定效果的动态面板模型中的滞后顺序选择。新标准显示可以控制这些模型中的过度选择/选择不足概率,并导致一致的订单选择标准。 (C)2015 Elsevier B.V.保留所有权利。

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