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Transductive Learning from Textual Data with Relevant Example Selection

机译:从文本数据进行转导学习并选择相关示例

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In many textual repositories, documents are organized in a hierarchy of categories to support a thematic search by browsing topics of interests. In this paper we present a novel approach for automatic classification of documents into a hierarchy of categories that works in the transductive setting and exploits relevant example selection. While resorting to the transductive learning setting permits to classify repositories where only few examples are labelled by exploiting information potentially conveyed by unlabelled data, relevant example selection permits to tame the complexity of the task and increase the rate of learning by focusing only on informative examples. Results on real world datasets show the effectiveness of the proposed solutions.
机译:在许多文本存储库中,文档按类别层次结构进行组织,以通过浏览感兴趣的主题来支持主题搜索。在本文中,我们提出了一种新颖的方法,用于将文档自动分类到类别层次结构中,该方法在转导环境中起作用并利用相关示例选择。尽管采用了转导学习设置,可以通过仅利用未标记数据可能传达的信息来对只有少数示例进行标记的存储库进行分类,但相关示例选择可以通过仅关注信息性示例来驯服任务的复杂性并提高学习率。真实数据集上的结果表明了所提出解决方案的有效性。

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