Measure Term Similarity using a Semantic Network Approach

D. Kulkarni, Swapnaja S. Kulkarni
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引用次数: 0

Abstract

Computing semantic similarity between two words comes with variety of approaches. This is mainly essential for the applications such as text analysis, text understanding. In traditional system search engines are used to compute the similarity between words. In that search engines are keyword based. There is one drawback that user should know what exactly they are looking for. There are mainly two main approaches for computation namely knowledge based and corpus based approaches. But there is one drawback that these two approaches are not suitable for computing similarity between multi-word expressions. This system provides efficient and effective approach for computing term similarity using semantic network approach. A clustering approach is used in order to improve the accuracy of the semantic similarity. This approach is more efficient than other computing algorithms. This technique can also apply to large scale dataset to compute term similarity.
使用语义网络方法测量术语相似度
计算两个词之间的语义相似度有多种方法。这对于文本分析、文本理解等应用是必不可少的。在传统的系统中,搜索引擎被用来计算词之间的相似度。因为搜索引擎是基于关键字的。有一个缺点,用户应该知道他们到底在寻找什么。计算方法主要有两种,即基于知识的方法和基于语料库的方法。但这两种方法都有一个缺点,即不适合计算多词表达式之间的相似度。该系统采用语义网络的方法,为术语相似度的计算提供了一种高效的方法。为了提高语义相似度的准确性,采用了聚类方法。这种方法比其他计算算法更有效。该技术也可以应用于大规模数据集来计算术语相似度。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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