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An extraction method of hyponymy based on multiple data sources fusion

机译:基于多数据源融合的开喻提取方法

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Hyponymy is one of the most critical semantic relations, which contributes magnificently to semantic dictionary, information retrieval etc. In this paper, a method of extracting hyponymy is proposed based on multiple data sources fusion, which convert the extraction of hyponymy to the extraction of hypernyms for target words. First, mining candidate hypernyms for the target words based on search engine, encyclopedia resources and core suffix words. Second, fusing the candidates from the above data sources. At last, the classification algorithm is used to filter the noise and extract the hypernyms, which is a quite mature machine learning algorithm. There is hyponymy between the target words and their correctly extracted hypernyms. The experimental results show that the highest accuracy rate of hyponymy extraction reaches 0.832 using the proposed method.
机译:开喻是最关键的语义关系之一,这在本文中辉煌地贡献了语义词典,信息检索等。基于多个数据源融合提出了一种提取的方法,该方法将开喻提取转换为提取高瘤的提取 对于目标词。 首先,基于搜索引擎,百科全书资源和核心后缀词的目标单词挖掘候选超征。 其次,从上述数据来源融合候选者。 最后,分类算法用于过滤噪声并提取高型,这是一个相当成熟的机器学习算法。 目标单词与其正确提取的高脉冲之间有一个下滑。 实验结果表明,使用该方法的开喻提取的最高精度率达到0.832。

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