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A Reduction of Label Ranking to Multiclass Classification

机译:将标签等级降低到多类分类

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摘要

Label ranking considers the problem of learning a mapping from instances to strict total orders over a predefined set of labels. In this paper, we present a framework for label ranking using a decomposition into a set of multiclass problems. Conceptually, our approach can be seen as a generalization of pairwise preference learning. In contrast to the latter, it allows for controlling the granularity of the decomposition, varying between binary preferences and complete rankings as extreme cases. It is specifically motivated by limitations of pairwise learning with regard to the minimization of certain loss functions. We discuss theoretical properties of the proposed method in terms of accuracy, error correction, and computational complexity. Experimental results are promising and indicate that improvements upon the special ease of pairwise preference decomposition are indeed possible.
机译:标签排名考虑了在一组预定义标签上学习从实例到严格总订单的映射的问题。在本文中,我们提出了一种使用分解成一组多类问题的标签排名的框架。从概念上讲,我们的方法可以看作是成对偏好学习的概括。与后者相反,它允许控制分解的粒度,在极端情况下,可以在二进制首选项和完整排名之间进行选择。关于成对学习的局限性,尤其是在某些损失函数最小化方面,这是有动机的。我们从准确性,纠错和计算复杂性方面讨论了所提出方法的理论特性。实验结果是有希望的,并且表明对逐对偏好分解的特殊简便性的改进确实是可能的。

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