Understanding and Improving Multi-Sense Word Embeddings via Extended Robust Principal Component Analysis

3 Mar 2018 Haoyue Shi Yuqi Sun Junfeng Hu

Unsupervised learned representations of polysemous words generate a large of pseudo multi senses since unsupervised methods are overly sensitive to contextual variations. In this paper, we address the pseudo multi-sense detection for word embeddings by dimensionality reduction of sense pairs... (read more)

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