Vec2Sent: Probing Sentence Embeddings with Natural Language Generation
2020-11-01COLING 2020Code Available0· sign in to hype
Martin Kerscher, Steffen Eger
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- github.com/maruker/vec2sentOfficialIn paperpytorch★ 6
Abstract
We introspect black-box sentence embeddings by conditionally generating from them with the objective to retrieve the underlying discrete sentence. We perceive of this as a new unsupervised probing task and show that it correlates well with downstream task performance. We also illustrate how the language generated from different encoders differs. We apply our approach to generate sentence analogies from sentence embeddings.