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Generating Sentences from Disentangled Syntactic and Semantic Spaces (1907.05789v1)

Published 6 Jul 2019 in cs.CL

Abstract: Variational auto-encoders (VAEs) are widely used in natural language generation due to the regularization of the latent space. However, generating sentences from the continuous latent space does not explicitly model the syntactic information. In this paper, we propose to generate sentences from disentangled syntactic and semantic spaces. Our proposed method explicitly models syntactic information in the VAE's latent space by using the linearized tree sequence, leading to better performance of language generation. Additionally, the advantage of sampling in the disentangled syntactic and semantic latent spaces enables us to perform novel applications, such as the unsupervised paraphrase generation and syntax-transfer generation. Experimental results show that our proposed model achieves similar or better performance in various tasks, compared with state-of-the-art related work.

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Authors (8)
  1. Yu Bao (36 papers)
  2. Hao Zhou (351 papers)
  3. Shujian Huang (106 papers)
  4. Lei Li (1293 papers)
  5. Lili Mou (79 papers)
  6. Olga Vechtomova (26 papers)
  7. Xinyu Dai (116 papers)
  8. Jiajun Chen (125 papers)
Citations (106)