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Kiros, Ryan, Zhu, Yukun, Salakhutdinov, Russ R., Zemel, Richard, Urtasun, Raquel, Torralba, Antonio, Fidler, Sanja
–Neural Information Processing Systems
We describe an approach for unsupervised learning of a generic, distributed sentence encoder. Using the continuity of text from books, we train an encoder-decoder model that tries to reconstruct the surrounding sentences of an encoded passage. Sentences that share semantic and syntactic properties are thus mapped to similar vector representations. We next introduce a simple vocabulary expansion method to encode words that were not seen as part of training, allowing us to expand our vocabulary to a million words. After training our model, we extract and evaluate our vectors with linear models on 8 tasks: semantic relatedness, paraphrase detection, image-sentence ranking, question-type classification and 4 benchmark sentiment and subjectivity datasets.
Neural Information Processing Systems
Feb-14-2020, 14:26:13 GMT
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