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Efficient Pairwise Classification

机译:高效成对分类

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摘要

Pairwise classification is a class binarization procedure that converts a multi-class problem into a series of two-class problems, one problem for each pair of classes. While it can be shown that for training, this procedure is more efficient than the more commonly used one-against-all approach, it still has to evaluate a quadratic number of classifiers when computing the predicted class for a given example. In this paper, we propose a method that allows a faster computation of the predicted class when weighted or unweighted voting are used for combining the predictions of the individual classifiers. While its worst-case complexity is still quadratic in the number of classes, we show that even in the case of completely random base classifiers, our method still outperforms the conventional pairwise classifier. For the more practical case of well-trained base classifiers, its asymptotic computational complexity seems to be almost linear.
机译:逐对分类是一种类二值化过程,它将多类问题转换为一系列两类问题,每对类有一个问题。虽然可以证明,对于训练而言,此过程比更常用的“反对所有”方法更有效,但在为给定示例计算预测类别时,仍然必须评估二次分类器。在本文中,我们提出了一种方法,当将加权或不加权投票用于合并各个分类器的预测时,可以更快地计算预测类别。尽管其最坏情况下的复杂度在类数上仍然是二次的,但我们证明,即使在完全随机的基本分类器的情况下,我们的方法仍然优于传统的成对分类器。对于训练有素的基本分类器的更实际案例,其渐近计算复杂度似乎几乎是线性的。

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