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Symmetric Pattern Based Word Embeddings for Improved Word Similarity Prediction
2015
Proceedings of the Nineteenth Conference on Computational Natural Language Learning
We present a novel word level vector representation based on symmetric patterns (SPs). For this aim we automatically acquire SPs (e.g., "X and Y") from a large corpus of plain text, and generate vectors where each coordinate represents the cooccurrence in SPs of the represented word with another word of the vocabulary. Our representation has three advantages over existing alternatives: First, being based on symmetric word relationships, it is highly suitable for word similarity prediction.
doi:10.18653/v1/k15-1026
dblp:conf/conll/SchwartzRR15
fatcat:b5q6u4mgtvfcfdxqzvzrgbyvaa