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Strengthening the Forward Variable Selection Stopping Criterion

机译:加强前向变量选择的停止标准

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Given any modeling problem, variable selection is a prepro-cess step that selects the most relevant variables with respect to the output variable. Forward selection is the most straightforward strategy for variable selection; its application using the mutual information is simple, intuitive and effective, and is commonly used in the machine learning literature. However the problem of when to stop the forward process doesn't have a direct satisfactory solution due to the inaccuracies of the Mutual Information estimation, specially as the number of variables considered increases. This work proposes a modified stopping criterion for this variable selection methodology that uses the Markov blanket concept. As it will be shown, this approach can increase the performance and applicability of the stopping criterion of a forward selection process using mutual information.
机译:对于任何建模问题,变量选择都是一个预处理步骤,该步骤针对输出变量选择最相关的变量。前向选择是最简单的变量选择策略。使用互信息的应用程序简单,直观且有效,并且是机器学习文献中常用的方法。但是,由于相互信息估计的不准确,特别是随着所考虑的变量数量的增加,何时停止转发过程的问题并不能获得直接令人满意的解决方案。这项工作为使用马尔可夫毯概念的变量选择方法提出了一种改进的停止标准。如将显示的,该方法可以使用互信息来提高前向选择过程的停止标准的性能和适用性。

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