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Reinforcement Learning Based Text Style Transfer without Parallel Training Corpus

机译:基于加强学习的文本方式转移,没有平行训练语料库

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Text style transfer rephrases a text from a source style (e.g., informal) to a target style (e.g., formal) while keeping its original meaning. Despite the success existing works have achieved using a parallel corpus for the two styles, transferring text style has proven significantly more challenging when there is no parallel training corpus. In this paper, we address this challenge by using a reinforcement-learning-based generator-evaluator architecture. Our generator employs an attention-based encoder-decoder to transfer a sentence from the source style to the target style. Our evaluator is an adversarially trained style discriminator with semantic and syntactic constraints that score the generated sentence for style, meaning preservation, and fluency. Experimental results on two different style transfer tasks (sentiment transfer and formality transfer) show that our model outperforms state-of-the-art approaches. Furthermore, we perform a manual evaluation that demonstrates the effectiveness of the proposed method using subjective metrics of generated text quality.
机译:文本样式传输将来自源样式(例如,非正式)的文本重新向量(例如,正式),同时保持其原始含义。尽管成功的作品使用了两种风格的并行语料库,但在没有平行培训语料库时,转移文本风格已明显更具挑战性。在本文中,我们通过使用基于强化学习的生成器评估符架构来解决这一挑战。我们的生成器采用基于关注的编码器解码器来将句子从源样式传输到目标样式。我们的评估员是一个普遍培训的风格鉴别器,具有语义和句法约束,可以为风格,意义保存和流利的生成的句子进行得分。两种不同风格转移任务(情景转移和形式转移)的实验结果表明,我们的模型优于最先进的方法。此外,我们执行手动评估,证明了使用所生成的文本质量的主观度量的提出方法的有效性。

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