Chinese Word Sense Embedding with SememeWSD and Synonym Set

Yangxi Zhou, Junping Du, Zhe Xue, Ang Li, Zeli Guan
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引用次数: 3

Abstract

. Word embedding is a fundamental natural language processing task which can learn feature of words. However, most word embedding methods assign only one vector to a word, even if polysemous words have multi-senses. To address this limitation, we propose SememeWSD Synonym (SWSDS) model to assign a different vector to every sense of polysemous words with the help of word sense disambiguation (WSD) and synonym set in OpenHowNet. We use the SememeWSD model, an unsupervised word sense disambiguation model based on OpenHowNet, to do word sense disambiguation and annotate the polysemous word with sense id. Then, we obtain top 10 synonyms of the word sense from OpenHowNet and calculate the average vector of synonyms as the vector of the word sense. In experiments, We evaluate the SWSDS model on semantic similarity calculation with Gensim’s wmdistance method. It achieves improvement of accuracy. We also examine the SememeWSD model on different BERT models to find the more effective model.
基于SememeWSD和同义词集的汉语词义嵌入
. 词嵌入是一项基本的自然语言处理任务,它可以学习词的特征。然而,大多数词嵌入方法只给一个词分配一个向量,即使多义词有多个意思。为了解决这一问题,我们提出了SememeWSD Synonym (SWSDS)模型,利用语义消歧(WSD)和OpenHowNet中的同义词集,为多义词的每个意义分配一个不同的向量。我们使用基于OpenHowNet的无监督语义消歧模型SememeWSD模型进行语义消歧,并对多义词进行义项id注释。然后,我们从OpenHowNet中获取词义的前10个同义词,并计算同义词的平均向量作为词义的向量。在实验中,我们使用Gensim的wmdistance方法对SWSDS模型的语义相似度计算进行了评价。实现了精度的提高。我们还在不同的BERT模型上检验了SememeWSD模型,以找到更有效的模型。
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