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A graph-based approach for semantic similar word retrieval

机译:基于图的语义相似词检索方法

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摘要

Semantic relatedness or semantic similarity between words is an important basic issue for many Natural Language Processing (NLP) applications, such as sentence retrieval, word sense disambiguation, question answering, and so on. This research issue attracts many researchers, but most of studies focus on improving the effectiveness, i.e., applying kinds of techniques to improve precision (effectiveness) but not efficiency. To tackle the problem, we propose to address the efficiency issue, that how to efficiently find top-k most semantic similar words to the query for a given dataset. This issue is very important for real applications especially for current big data. Efficient graph-based approaches on searching top-k semantic similar words are proposed in this paper. The results demonstrate that the proposed model can perform significantly better than baseline method.
机译:单词之间的语义相关性或语义相似性是许多自然语言处理(NLP)应用程序的重要基本问题,例如句子检索,单词义消歧,问题解答等。这个研究问题吸引了许多研究人员,但是大多数研究集中在提高有效性上,即应用各种技术来提高精度(有效性)而不是效率。为了解决该问题,我们建议解决效率问题,即如何针对给定的数据集有效地找到与查询相关的前k个最语义相似的词。对于实际应用程序,尤其是当前的大数据,此问题非常重要。提出了一种基于图的高效搜索top-k语义相似词的方法。结果表明,所提出的模型可以比基线方法具有更好的性能。

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