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An Analysis of Chaining in Multi-Label Classification

机译:多标签分类中的链接分析

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The idea of classifier chains has recently been introduced as a promising technique for multi-label classification. However, despite being intuitively appealing and showing strong performance in empirical studies, still very little is known about the main principles underlying this type of method. In this paper, we provide a detailed probabilistic analysis of classifier chains from a risk minimization perspective, thereby helping to gain a better understanding of this approach. As a main result, we clarify that the original chaining method seeks to approximate the joint mode of the conditional distribution of label vectors in a greedy manner. As a result of a theoretical regret analysis, we conclude that this approach can perform quite poorly in terms of subset 0/1 loss. Therefore, we present an enhanced inference procedure for which the worst-case regret can be upper-bounded far more tightly. In addition, we show that a probabilistic variant of chaining, which can be utilized for any loss function, becomes tractable by using Monte Carlo sampling. Finally, we present experimental results confirming the validity of our theoretical findings.
机译:分类器链的思想最近被引入作为一种有希望的多标签分类技术。但是,尽管在实证研究中具有直观的吸引力并表现出出色的性能,但对于这种方法背后的主要原理仍然知之甚少。在本文中,我们从风险最小化的角度对分类器链进行了详细的概率分析,从而有助于更好地了解这种方法。作为主要结果,我们阐明了原始链接方法试图以贪婪的方式近似标记向量的条件分布的联合模式。作为理论后悔分析的结果,我们得出结论,就子集0/1损失而言,此方法的性能可能非常差。因此,我们提出了一种增强的推理程序,对于该程序,最坏情况的后悔可以更加严格地被限制。此外,我们显示了可用于任何损失函数的链式概率变体通过使用蒙特卡洛采样变得易于处理。最后,我们提出的实验结果证实了我们理论发现的正确性。

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