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Multi-class least squares classification at binary-classification complexity

机译:二进制分类复杂度的多类最小二乘分类

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This paper deals with multi-class classification problems. Many methods extend binary classifiers to operate a multi-class task, with strategies such as the one-vs-one and the one-vs-all schemes. However, the computational cost of such techniques is highly dependent on the number of available classes. We present a method for multi-class classification, with a computational complexity essentially independent of the number of classes. To this end, we exploit recent developments in multifunctional optimization in machine learning. We show that in the proposed algorithm, labels only appear in terms of inner products, in the same way as input data emerge as inner products in kernel machines via the so-called the kernel trick. Experimental results on real data show that the proposed method reduces efficiently the computational time of the classification task without sacrificing its generalization ability.
机译:本文涉及多级分类问题。许多方法扩展二进制分类器以运行多级任务,具有诸如单vs-one和vs-all方案的策略。然而,这种技术的计算成本高度依赖于可用类的数量。我们提出了一种用于多级分类的方法,具有基本上独立于类的计算复杂性。为此,我们利用了机器学习中多功能优化的最新发展。我们显示,在所提出的算法中,标签仅在内部产品方面出现,以与输入数据通过所谓的内核技巧作为内部产品的输入数据相同。实验结果对实际数据表明,该方法有效地减少了分类任务的计算时间而不牺牲其泛化能力。

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