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Word Sense Disambiguation Based on Word Similarity Calculation Using Word Vector Representation from a Knowledge-based Graph

机译:基于Word Vector Compulation基于Word Vectory Calkenation基于Word Issigation Calk的词感歧义

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Word sense disambiguation (WSD) is the task to determine the sense of an ambiguous word according to its context. Many existing WSD studies have been using an external knowledge-based unsupervised approach because it has fewer word set constraints than supervised approaches requiring training data. In this paper, we propose a new WSD method to generate the context of an ambiguous word by using similarities between an ambiguous word and words in the input document. In addition, to leverage our WSD method, we further propose a new word similarity calculation method based on the semantic network structure of BabelNet. We evaluate the proposed methods on the SemEval-2013 and SemEval-2015 for English WSD dataset. Experimental results demonstrate that the proposed WSD method significantly improves the baseline WSD method. Furthermore, our WSD system outperforms the state-of-the-art WSD systems in the Semeval-13 dataset. Finally, it has higher performance than the state-of-the-art unsupervised knowledge-based WSD system in the average performance of both datasets.
机译:词感消解(WSD)是根据其上下文确定含糊不清词的意义的任务。许多现有的WSD研究一直在使用基于外部知识的无监督方法,因为它具有比需要训练数据的监督方法更少的单词集约束。在本文中,我们提出了一种新的WSD方法,通过使用输入文档中的模糊单词和单词之间的相似性来生成模糊单词的上下文。此外,为了利用我们的WSD方法,我们进一步提出了一种基于Babelnet的语义网络结构的新词相似性计算方法。我们在Semeval-2013和Semeval-2015上评估了英语WSD数据集的建议方法。实验结果表明,所提出的WSD方法显着改善了基线WSD方法。此外,我们的WSD系统优于Semeval-13数据集中的最先进的WSD系统。最后,它的性能比在两个数据集的平均性能中的基于现有的无监督知识的WSD系统更高。

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