Monisha Jegadeesan

1paper

1 Paper

CLOct 25, 2021Code
Improving the Diversity of Unsupervised Paraphrasing with Embedding Outputs

Monisha Jegadeesan, Sachin Kumar, John Wieting et al.

We present a novel technique for zero-shot paraphrase generation. The key contribution is an end-to-end multilingual paraphrasing model that is trained using translated parallel corpora to generate paraphrases into "meaning spaces" -- replacing the final softmax layer with word embeddings. This architectural modification, plus a training procedure that incorporates an autoencoding objective, enables effective parameter sharing across languages for more fluent monolingual rewriting, and facilitates fluency and diversity in generation. Our continuous-output paraphrase generation models outperform zero-shot paraphrasing baselines when evaluated on two languages using a battery of computational metrics as well as in human assessment.