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Learning Fine-grained Relations from Chinese User Generated Categories

机译:从中国用户生成的类别中学习细粒度关系

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User generated categories (UGCs) are short texts that reflect how people describe and organize entities, expressing rich semantic relations implicitly. While most methods on UGC relation extraction are based on pattern matching in English circumstances, learning relations from Chinese UGCs poses different challenges due to the flexibility of expressions. In this paper, we present a weakly supervised learning framework to harvest relations from Chinese UGCs. We identify ls-a relations via word embedding based projection and inference, extract non-taxonomic relations and their category patterns by graph mining. We conduct experiments on Chinese Wikipedia and achieve high accuracy, outperforming state-of-the-art methods.
机译:用户生成的类别(UGCS)是简短的文本,反映人们如何描述和组织实体,含有含有丰富的语义关系。虽然大多数关于UGC关系提取的方法基于英语环境中的模式匹配,但由于表达的灵活性,中国UGCs的学习关系构成了不同的挑战。在本文中,我们为从中国UGC的收获关系提供了一个弱监督的学习框架。我们通过嵌入基于投影和推断,提取非分类学关系及其类别模式来识别LS-A关系。我们对中国维基百科进行实验,实现高精度,优于最先进的方法。

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