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Applying the self-training semi-supervised learning in hierarchical multi-label methods

机译:在分层多标签方法中应用自我培训半监督学习

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In classification problems with hierarchical structures of labels, the target function must assign several labels that are hierarchically organized. The hierarchical structures of labels can be used either for single-label (one label per instance) or multi-label classification problems (more than one label per instance). In general, classification tasks are usually trained using a standard supervised learning procedure. However, the majority of classification methods require a large number of training instances to be able to generalize the mapping function, making predictions with high accuracy. In order to smooth out this problem, the idea of semi-supervised learning has emerged. It combines labelled and unlabelled data during the training phase. Some semi-supervised methods have been proposed for single-label classification methods. However, very little effort has been done in the context of multi-label hierarchical classification. This paper proposes the use of a semi-supervised learning method for the multi-label hierarchical problems. In order to validate the feasibility of these methods, an empirical analysis will be conducted, comparing the proposed methods with their corresponding supervised versions. The main aim of this analysis is to observe whether the semi-supervised methods proposed in this paper have similar performance to the corresponding supervised versions.
机译:在标签分层结构的分类问题中,目标函数必须分配几个分层组织的标签。标签的分层结构可以用于单个标签(每隔一个标签)或多标签分类问题(每个实例的标签)。通常,分类任务通常使用标准监督学习程序培训。然而,大多数分类方法需要大量的培训实例能够概括映射函数,以高精度制定预测。为了平稳出这个问题,出现了半监督学习的想法。它在训练阶段结合了标记和未标记的数据。已经提出了一些半监督方法,用于单标准分类方法。然而,在多标签分层分类的背景下已经很少的努力。本文提出了使用半监督学习方法来实现多标签分层问题。为了验证这些方法的可行性,将进行实证分析,将建议的方法与其相应的监督版本进行比较。该分析的主要目的是遵守本文提出的半监督方法是否对相应的监督版本具有类似的性能。

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