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Using big data to support automatic Word Sense Disambiguation

机译:使用大数据来支持自动词感歧义

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Word Sense Disambiguation (WSD) usually relies on data structures built upon the words to be disambiguated. This is a time-consuming process that requires a huge computational effort. In this paper, we propose an approach to automatically build a generic sense inventory (called iSC) to be used as a reference for disambiguation. The sense inventory is built extracting insight from Big Data exploiting a community detection algorithm. Since generate taking into account large corpora of data, the iSC is independent of the domain of application and of predefined target words.
机译:字感消歧(WSD)通常依赖于构建的数据结构,以消除歧义。这是一个需要巨大的计算工作的耗时过程。在本文中,我们提出了一种方法来自动构建通用感测库存(称为ISC)作为歧义的参考。感测库存从利用社区检测算法的大数据建立提取洞察力。由于生成考虑到大型数据的数据,因此ISC独立于应用领域和预定义的目标单词。

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