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Improving Adversarial Text Generation by Modeling the Distant Future

Ruiyi Zhang, Changyou Chen, Zhe Gan, Wenlin Wang, Dinghan Shen, Guoyin Wang, Zheng Wen, Lawrence Carin

202017 citationsDOIOpen Access PDF

Abstract

Auto-regressive text generation models usually focus on local fluency, and may cause inconsistent semantic meaning in long text generation. Further, automatically generating words with similar semantics is challenging, and hand-crafted linguistic rules are difficult to apply. We consider a text planning scheme and present a model-based imitation-learning approach to alleviate the aforementioned issues. Specifically, we propose a novel guider network to focus on the generative process over a longer horizon, which can assist next-word prediction and provide intermediate rewards for generator optimization. Extensive experiments demonstrate that the proposed method leads to improved performance.

Topics & Concepts

Computer scienceText generationFocus (optics)Generative grammarArtificial intelligenceGenerator (circuit theory)Adversarial systemFluencySemantics (computer science)Word (group theory)Natural language processingScheme (mathematics)Process (computing)Machine learningLinguisticsPower (physics)Mathematical analysisQuantum mechanicsPhilosophyOpticsPhysicsMathematicsOperating systemProgramming languageTopic ModelingMultimodal Machine Learning ApplicationsNatural Language Processing Techniques
Improving Adversarial Text Generation by Modeling the Distant Future | Litcius