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首页> 外文期刊>Annals of the Institute of Statistical Mathematics >Prediction error criterion for selecting variables in a linear regression model
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Prediction error criterion for selecting variables in a linear regression model

机译:在线性回归模型中选择变量的预测误差准则

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Several criteria, such as CV, C p , AIC, CAIC, and MAIC, are used for selecting variables in linear regression models. It might be noted that C p has been proposed as an estimator of the expected standardized prediction error, although the target risk function of CV might be regarded as the expected prediction error R PE. On the other hand, the target risk function of AIC, CAIC, and MAIC is the expected log-predictive likelihood. In this paper, we propose a prediction error criterion, PE, which is an estimator of the expected prediction error R PE. Consequently, it is also a competitor of CV. Results of this study show that PE is an unbiased estimator when the true model is contained in the full model. The property is shown without the assumption of normality. In fact, PE is demonstrated as more faithful for its risk function than CV. The prediction error criterion PE is extended to the multivariate case. Furthermore, using simulations, we examine some peculiarities of all these criteria.
机译:一些标准,例如CV,C p ,AIC,CAIC和MAIC,用于选择线性回归模型中的变量。可能注意到,尽管CV的目标风险函数可能被视为预期的预测误差R PE p 作为预期的标准预测误差的估计量。 >。另一方面,AIC,CAIC和MAIC的目标风险函数是预期的对数预测可能性。在本文中,我们提出了一个预测误差准则PE,它是预期预测误差R PE 的估计量。因此,它也是CV的竞争对手。这项研究的结果表明,当完整模型中包含真实模型时,PE是一个无偏估计量。显示该属性时没有假定正常性。实际上,事实证明,PE的风险功能比CV更忠实。预测误差标准PE扩展到多元情况。此外,使用模拟,我们检查了所有这些标准的一些特殊性。

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