Sense Inventories for Arabic Texts

Marwah Alian, A. Awajan
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引用次数: 6

Abstract

Word sense disambiguation is the process of determining the proper meaning of a word according to its context. In this study, we represent the impact of word embedding on building Arabic sense inventory by an unsupervised approach. Three pre-trained embeddings are tested to investigate their effect on the resulting sense inventory and their efficiency in word sense disambiguation for Arabic context. Sense inventories are constructed using a fully unsupervised method based on graph-based word sense induction algorithm. The results show that Aravec-Twitter inventory achieves the best accuracy of 0.47 for 50-neighbors and a close accuracy to the Fasttext inventory for 200-neighbors.
阿拉伯语文本的感觉清单
词义消歧是根据上下文确定一个词的正确意义的过程。在这项研究中,我们通过一种无监督的方法来描述词嵌入对建立阿拉伯语语义库的影响。测试了三个预训练的嵌入,以研究它们对产生的语义清单的影响以及它们在阿拉伯语上下文的词义消歧中的效率。使用基于基于图的词义归纳算法的完全无监督方法构建语义清单。结果表明,Aravec-Twitter清单在50个邻居的情况下达到了0.47的最佳精度,在200个邻居的情况下接近Fasttext清单的精度。
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