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Combining Pairwise Classifiers with Stacking

机译:将成对分类器与堆叠相结合

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Pairwise classification is the technique that deals with multi-class problems by converting them into a series of binary problems, one for each pair of classes. The predictions of the binary classifiers are typically combined into an overall prediction by voting and predicting the class that received the largest number of votes. In this paper we try to generalize the voting procedure by replacing it with a trainable classifier, i.e., we propose the use of a meta-level classifier that is trained to arbiter among the conflicting predictions of the binary classifiers. In our experiments, this yielded substantial gains on a few datasets, but no gain on others. These performance differences do not seem to depend on quantitative parameters of the datasets, like the number of classes.
机译:成对分类是通过将它们转换为一系列二进制问题来处理多级问题的技术,每个类别为每对类。二元分类器的预测通常通过投票和预测接收最大票数的类组合成总体预测。在本文中,我们尝试通过用可培训分类器替换它来概括投票过程,即,我们建议使用在二元分类器的冲突预测中训练的元级分类器。在我们的实验中,这在一些数据集上产生了大量的收益,但其他数据集没有收益。这些性能差异似乎似乎不依赖于数据集的定量参数,如类的数量。

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