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Best-subset model selection based on multitudinal assessments of likelihood improvements

机译:基于似乎似然性改进的多型评估的最佳子集模型选择

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A common model selection approach is to select the best model, according to some criterion, from among the collection of models defined by all possible subsets of the explanatory variables. Identifying an optimal subset has proven to be a challenging problem, both statistically and computationally. Our model selection procedure allows the researcher to nominate, a priori, the probability at which models containing false or spurious variables will be selected from among all possible subsets. The procedure determines whether inclusion of each candidate variable results in a sufficiently improved fitting term - and is hence named the SIFT procedure. Two variants are proposed: a naive method based on a set of restrictive assumptions and an empirical permutation-based method. Properties of these methods are investigated within the standard linear modeling framework and performance is evaluated against other model selection techniques. The SIFT procedure behaves as designed - asymptotically selecting variables that characterize the underlying data generating mechanism, while limiting selection of spurious variables to the desired level. The SIFT methodology offers researchers a promising new approach to model selection, providing the ability to control the probability of selecting a model that includes spurious variables to a level based on the context of the application.
机译:常用的模型选择方法是根据一些标准选择最佳模型,从由解释变量的所有可能子集定义的模型的集合中。识别最佳子集已被证明是统计和计算的具有挑战性的问题。我们的模型选择程序允许研究人员提名,先验,将从所有可能的子集中中选择包含虚假或杂散变量的模型的概率。该过程确定是否包含每个候选变量的拟合术语 - 并且因此命名为SIFT过程。提出了两种变体:一种基于一组限制性假设的天真方法和基于经验置换的方法。在标准的线性建模框架内研究了这些方法的性质,并评估了其他模型选择技术的性能。 SIFT过程的表现为设计 - 渐近选择底层数据生成机制的变量,同时将杂散变量的选择限制为所需的级别。 SIFT方法提供了研究人员对模型选择的有希望的新方法,提供控制在应用程序的上下文基于应用程序中选择包含杂散变量的模型的概率的能力。

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