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SensPick: Sense Picking for Word Sense Disambiguation

机译:Senspick:感觉挑选词感歧义

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Word sense disambiguation (WSD) methods identify the most suitable meaning of a word with respect to the usage of that word in a specific context. Neural network-based WSD approaches rely on a sense-annotated corpus since they do not utilize lexical resources. In this study, we utilize both context and related gloss information of a target word to model the semantic relationship between the word and the set of glosses. We propose SensPick, a type of stacked bidirectional Long Short Term Memory (LSTM) network to perform the WSD task. The experimental evaluation demonstrates that SensPick outperforms traditional and state-of-the-art models on most of the benchmark datasets with a relative improvement of 3.5% in F-1 score. While the improvement is not significant, incorporating semantic relationships brings SensPick in the leading position compared to others.
机译:字感消除歧义(WSD)方法在特定上下文中识别关于该词的使用的最合适的含义。基于神经网络的WSD方法依赖于感觉注释的语料库,因为它们不利用词汇资源。在本研究中,我们利用目标词的上下文和相关光泽信息来模拟单词和一组界面之间的语义关系。我们提出Senspick,一种堆叠的双向长短短期内存(LSTM)网络,用于执行WSD任务。实验评估表明,Senspick在大多数基准数据集中优于传统和最先进的模型,相对提高的F-1分数为3.5%。虽然改进并不重要,但与他人相比,纳入语义关系使Senspick在领先位置。

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