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Syntax-driven Iterative Expansion Language Models for Controllable Text Generation

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arxiv 2004.02211 v2 pith:NFOU2PHT submitted 2020-04-05 cs.CL

Syntax-driven Iterative Expansion Language Models for Controllable Text Generation

classification cs.CL
keywords textgenerationparadigmlanguagesyntacticallowsapproachbias
verification ladder T0 review T1 audit T2 compute T3 formal T4 reserved
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The dominant language modeling paradigm handles text as a sequence of discrete tokens. While that approach can capture the latent structure of the text, it is inherently constrained to sequential dynamics for text generation. We propose a new paradigm for introducing a syntactic inductive bias into neural text generation, where the dependency parse tree is used to drive the Transformer model to generate sentences iteratively. Our experiments show that this paradigm is effective at text generation, with quality between LSTMs and Transformers, and comparable diversity, requiring less than half their decoding steps, and its generation process allows direct control over the syntactic constructions of the generated text, enabling the induction of stylistic variations.

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