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Chinese Poetry Generation with Planning based Neural Network (1610.09889v2)
Published 31 Oct 2016 in cs.CL and cs.AI
Abstract: Chinese poetry generation is a very challenging task in natural language processing. In this paper, we propose a novel two-stage poetry generating method which first plans the sub-topics of the poem according to the user's writing intent, and then generates each line of the poem sequentially, using a modified recurrent neural network encoder-decoder framework. The proposed planning-based method can ensure that the generated poem is coherent and semantically consistent with the user's intent. A comprehensive evaluation with human judgments demonstrates that our proposed approach outperforms the state-of-the-art poetry generating methods and the poem quality is somehow comparable to human poets.
- Zhe Wang (574 papers)
- Wei He (188 papers)
- Hua Wu (191 papers)
- Haiyang Wu (11 papers)
- Wei Li (1121 papers)
- Haifeng Wang (194 papers)
- Enhong Chen (242 papers)