Uncovering divergent linguistic information in word embeddings with lessons for intrinsic and extrinsic evaluation

Following the recent success of word embeddings, it has been argued that there is no such thing as an ideal representation for words, as different models tend to capture divergent and often mutually incompatible aspects like semantics/syntax and similarity/relatedness. In this paper, we show that each embedding model captures more information than directly apparent... (read more)

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