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The ContrastMedium Algorithm: Taxonomy Induction From Noisy Knowledge Graphs With Just a Few Links

机译:ContrastMedium算法:仅包含少量链接的嘈杂知识图的分类法归纳

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In this paper, we present ContrastMedium, an algorithm that transforms noisy semantic networks into full-fledged, clean taxonomies. ContrastMedium is able to identify the embedded taxonomy structure from a noisy knowledge graph without explicit human supervision such as, for instance, a set of manually selected input root and leaf concepts. This is achieved by leveraging structural information from a companion reference taxonomy, to which the input knowledge graph is linked (either automatically or manually). When used in conjunction with methods for hypernym acquisition and knowledge base linking, our methodology provides a complete solution for end-to-end taxonomy induction. We conduct experiments using automatically acquired knowledge graphs, as well as a SemEval benchmark, and show that our method is able to achieve high performance on the task of taxonomy induction.
机译:在本文中,我们介绍了ContrastMedium,它是一种将嘈杂的语义网络转换为成熟,干净的分类法的算法。 ContrastMedium能够从嘈杂的知识图中识别嵌入式分类法结构,而无需明确的人工监督,例如一组手动选择的输入根和叶概念。这是通过利用来自伴随参考分类法的结构信息来实现的,输入知识图已链接到该参考信息(自动或手动)。当与用于上位词获取和知识库链接的方法结合使用时,我们的方法论为端到端分类法归纳提供了完整的解决方案。我们使用自动获取的知识图以及SemEval基准进行了实验,并表明我们的方法能够在归类分类任务上实现高性能。

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