Exploring Semantic Properties of Sentence Embeddings
2018-07-01ACL 2018Unverified0· sign in to hype
Xunjie Zhu, Tingfeng Li, Gerard de Melo
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Neural vector representations are ubiquitous throughout all subfields of NLP. While word vectors have been studied in much detail, thus far only little light has been shed on the properties of sentence embeddings. In this paper, we assess to what extent prominent sentence embedding methods exhibit select semantic properties. We propose a framework that generate triplets of sentences to explore how changes in the syntactic structure or semantics of a given sentence affect the similarities obtained between their sentence embeddings.