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Measuring semantic similarity in WordNet by using Neural Network and Differential Evolution Algorithm

机译:使用神经网络和差分演进算法测量Wordnet中的语义相似性

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Semantic similarity between two words is an important problem in, many applications of information retrieval and word sense disambiguation. In this paper, we calculate semantic similarity between two words by using the lexical database called WordNet and neural network. The neural network learning process is formulated as an optimization problem and optimized by using the Differential Evolution algorithm. We use the Rubenstein and Goodenough, and Miller and Charles datasets to test the similarity results. Our model produces high values of correlations for both the datasets.
机译:两个单词之间的语义相似性是一个重要问题,许多信息检索和词语感应消歧的应用。在本文中,我们通过使用名为Wordnet和神经网络的词汇数据库计算两个单词之间的语义相似性。神经网络学习过程被制定为优化问题,并通过使用差分演进算法进行优化。我们使用Rubenstein和Goodenough,以及米勒和查尔斯数据集来测试相似性结果。我们的模型为数据集产生了高值的相关性。

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