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If you were doing textanalytics in 2015, you were probably using word2vec. al, 2015) is a new twist on word2vec that lets you learn more interesting, detailed and context-sensitive word vectors. Sense2vec (Trask et.
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If you were doing textanalytics in 2015, you were probably using word2vec. al, 2015) is a new twist on word2vec that lets you learn more interesting, detailed and context-sensitive word vectors. So when Trask et al (2015) published a nice set of experiments showing that the idea worked well, we were easy to convince.
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