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Bias of Importance Measures for Multi-valued Attributes and Solutions

机译:多价属性和解决方案的重要措施的偏见

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Attribute importance measures for supervised learning are important for improving both learning accuracy and interpretability. However, it is well-known there could be bias when the predictor attributes have different numbers of values. We propose two methods to solve the bias problem. One uses an out-of-bag sampling method called OOBForest and one, based on the new concept of a partial permutation test, is called pForest. The existing research has considered the bias problem only among irrelevant attributes and equally informative attributes, while we compare to existing methods in a situation where unequally informative attributes (with or without interactions) and irrelevant attributes co-exist. We observe that the existing methods are not always reliable for multi-valued predictors, while the proposed methods compare favorably in our experiments.
机译:监督学习的属性重要性措施对于提高学习准确性和可解释性很重要。但是,当预测器属性具有不同数量的值时,众所周知,可能存在偏差。我们提出了两种解决偏见问题的方法。一种使用一种名为OOBFOREST的外包采样方法,一个基于部分排列测试的新概念称为PLET。现有的研究仅考虑了不相关的属性和同样的信息性的偏置问题,而我们将与现有方法相比,在不平等信息的属性(有或没有相互作用)和不相关的属性的情况下。我们观察到,对于多值预测器,现有方法并不总是可靠,而所提出的方法在我们的实验中比较有利地比较。

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