Supervised and Unsupervised Word Sense Disambiguation on Word Embedding Vectors of Unambigous Synonyms

A. Wawer, A. Mykowiecka
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引用次数: 9

Abstract

This paper compares two approaches to word sense disambiguation using word embeddings trained on unambiguous synonyms. The first is unsupervised method based on computing log probability from sequences of word embedding vectors, taking into account ambiguous word senses and guessing correct sense from context. The second method is supervised. We use a multilayer neural network model to learn a context-sensitive transformation that maps an input vector of ambiguous word into an output vector representing its sense. We evaluate both methods on corpora with manual annotations of word senses from the Polish wordnet (plWordnet).
无歧义同义词词嵌入向量的有监督和无监督词义消歧
本文比较了两种使用无二义同义词训练的词嵌入来消除词义歧义的方法。第一种是基于从词嵌入向量序列中计算对数概率的无监督方法,该方法考虑了词的歧义,并根据上下文猜测正确的词义。第二种方法是监督。我们使用多层神经网络模型来学习上下文敏感转换,该转换将歧义词的输入向量映射到表示其意义的输出向量。我们用波兰语词汇网(plWordnet)的语义手工标注在语料库上评估了这两种方法。
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