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Pairwise classifier combination using belief functions

机译:使用置信函数的成对分类器组合

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摘要

In the so-called pairwise approach to polychotomous classification, a multiclass problem is solved by combining classifiers trained to discriminate between each pair of classes. In this paper, this approach is revisited in the framework of the Dempster-Shafer theory of belief functions, a non-probabilistic framework for quantifying and manipulating partial knowledge. It is proposed to interpret the output of each pairwise classifiers by a conditional belief function. The problem of classifier combination then amounts to computing the non-conditional belief function which is the most consistent, according to some criterion, with the conditional belief functions provided by the classifiers. Experiments with various datasets demonstrate the good performances of this method as compared to previous approaches to the same problem.
机译:在所谓的成对分类方法中,通过组合训练以区分每对类别的分类器来解决多类别问题。在本文中,这种方法是在信念函数的Dempster-Shafer理论框架中重新研究的,信念函数是一种用于量化和处理部分知识的非概率框架。建议通过条件置信函数解释每个成对分类器的输出。然后,分类器组合的问题就等于计算非条件置信函数,根据某些准则,该非条件置信函数与分类器提供的条件置信函数最一致。与以前的解决相同问题的方法相比,使用各种数据集进行的实验证明了该方法的良好性能。

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