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MEASURING SEMANTIC SIMILARITY IN WORDNET

机译:在WORDNET中测量语义相似度

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摘要

Semantic similarity between words is a generic problem for many applications of computational linguistics and artificial intelligence.The difficulty of this task lies in how to find an effective way to simulate the process of human judgment of word similarity by combining and processing a number of information sources.This paper presents a novel model to measure semantic similarity between words in the WordNet, using edge-counting techniques.The fundamental idea of this model is based on the assumption that human judgment process for semantic similarity can be simulated by the ratio of common features to the total features between words.According to the experiment against a benchmark set by human similarity judgment, our measure achieves a better result.The correlation is 0.926 with average human judgment on a standard 28 word-pair dataset, which outperforms other previous reported methods.
机译:单词之间的语义相似性是计算语言学和人工智能的许多应用中普遍存在的问题。此任务的困难在于如何找到一种有效的方法,通过组合和处理大量信息源来模拟人类对单词相似性的判断过程本文提出了一种利用边缘计数技术来测量WordNet中单词间语义相似性的新颖模型。该模型的基本思想是基于这样的假设,即可以通过共同特征的比率来模拟人类对语义相似性的判断过程。根据人类相似性判断设定的基准进行的实验,我们的测量取得了更好的结果。在标准的28个词对数据集上,与人类平均判断的相关性为0.926,这优于以前报道的其他方法。

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