基于对数似然比和约束最小准则的回归模型选择

Pub Date : 2023-01-10 DOI:10.1002/cjs.11756
Min Tsao
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引用次数: 0

摘要

尽管对数似然在模型选择中被广泛使用,但对数似然比在这一领域的应用很少。我们开发了一种基于对数似然比的方法,通过关注似然比测试认为合理的模型集来选择回归模型。我们表明,当样本量大,测试的显著性水平小时,集合中最小的模型是真实模型的概率很高;因此,我们选择了这个最小的模型。显著性水平是该方法的一个参数。我们在模拟研究中考虑了该参数的三个级别,并将该方法与Akaike信息准则和贝叶斯信息准则进行了比较,以证明其具有良好的准确性和对不同样本量的适应性。我们还应用这种方法为南非心脏病数据集选择了一个逻辑回归模型。
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Regression model selection via log-likelihood ratio and constrained minimum criterion

Although log-likelihood is widely used in model selection, the log-likelihood ratio has had few applications in this area. We develop a log-likelihood ratio based method for selecting regression models by focusing on the set of models deemed plausible by the likelihood ratio test. We show that when the sample size is large and the significance level of the test is small, there is a high probability that the smallest model in this set is the true model; thus, we select this smallest model. The significance level of the test serves as a tuning parameter of this method. We consider three levels of this parameter in a simulation study and compare this method with the Akaike information criterion (AIC) and Bayesian information criterion (BIC) to demonstrate its excellent accuracy and adaptability to different sample sizes. This method is a frequentist alternative and a strong competitor to AIC and BIC for selecting regression models.

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