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Joint Learning of Hyperbolic Label Embeddings for Hierarchical Multi-label Classification

机译:双曲标签嵌入的联合学习分层多标签分类

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We consider the problem of multi-label classification, where the labels lie in a hierarchy. However, unlike most existing works in hierarchical multi-label classification, we do not assume that the label-hierarchy is known. Encouraged by the recent success of hyperbolic embeddings in capturing hierarchical relations, we propose to jointly learn the classifier parameters as well as the label embeddings. Such a joint learning is expected to provide a twofold advantage: ⅰ) the classifier generalises better as it leverages the prior knowledge of existence of a hierarchy over the labels, and ⅱ) in addition to the label co-occurrence information, the label-embedding may benefit from the manifold structure of the input datapoints, leading to embeddings that are more faithful to the label hierarchy. We propose a novel formulation for the joint learning and empirically evaluate its efficacy. The results show that the joint learning improves over the baseline that employs label co-occurrence based pre-trained hyperbolic embeddings. Moreover, the proposed classifiers achieve state-of-the-art generalization on standard benchmarks. We also present evaluation of the hyperbolic embeddings obtained by joint learning and show that they represent the hierarchy more accurately than the other alternatives. The source code of the paper is available here.
机译:我们考虑了多标签分类问题,标签位于层次结构中。但是,与分层多标签分类中的大多数现有工作不同,我们不认为是已知标签层次结构。通过近期捕获分层关系的双曲嵌入成功的鼓励,我们建议共同学习分类器参数以及标签嵌入。这种联合学习预计将提供双重优势:Ⅰ)分类器更好地推广,因为它在利用标签上使用了层次结构的先前知识,而且Ⅱ)除标签共同信息外,标签嵌入可以从输入数据点的歧管结构中受益,导致嵌入式更忠于标签层次结构。我们为联合学习提出了一种新颖的制定,并经验性评估其疗效。结果表明,联合学习改善了采用基于标签的训练预先发生的双曲线嵌入的基线。此外,所提出的分类器在标准基准上实现最先进的概括。我们还提出了通过联合学习获得的双曲线嵌入品的评估,并表明它们比其他替代方案更准确地代表层次结构。此处提供了纸张的源代码。

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