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Explicit Syntactic Guidance for Neural Text Generation

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arxiv 2306.11485 v2 pith:I6QPIAW2 submitted 2023-06-20 cs.CL

Explicit Syntactic Guidance for Neural Text Generation

classification cs.CL
keywords generationsyntaxconstituentcontextgrammarlanguagemethodpropose
verification ladder T0 review T1 audit T2 compute T3 formal T4 reserved
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Most existing text generation models follow the sequence-to-sequence paradigm. Generative Grammar suggests that humans generate natural language texts by learning language grammar. We propose a syntax-guided generation schema, which generates the sequence guided by a constituency parse tree in a top-down direction. The decoding process can be decomposed into two parts: (1) predicting the infilling texts for each constituent in the lexicalized syntax context given the source sentence; (2) mapping and expanding each constituent to construct the next-level syntax context. Accordingly, we propose a structural beam search method to find possible syntax structures hierarchically. Experiments on paraphrase generation and machine translation show that the proposed method outperforms autoregressive baselines, while also demonstrating effectiveness in terms of interpretability, controllability, and diversity.

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