Multi-Pair Text Style Transfer for Unbalanced Data via Task-Adaptive Meta-Learning

Xing Han, J. Lundin
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引用次数: 1

Abstract

Text-style transfer aims to convert text given in one domain into another by paraphrasing the sentence or substituting the keywords without altering the content. By necessity, state-of-the-art methods have evolved to accommodate nonparallel training data, as it is frequently the case there are multiple data sources of unequal size, with a mixture of labeled and unlabeled sentences. Moreover, the inherent style defined within each source might be distinct. A generic bidirectional (e.g., formal \Leftrightarrow informal) style transfer regardless of different groups may not generalize well to different applications. In this work, we developed a task adaptive meta-learning framework that can simultaneously perform a multi-pair text-style transfer using a single model. The proposed method can adaptively balance the difference of meta-knowledge across multiple tasks. Results show that our method leads to better quantitative performance as well as coherent style variations. Common challenges of unbalanced data and mismatched domains are handled well by this method.
基于任务自适应元学习的非平衡数据多对文本风格迁移
文本样式转换的目的是在不改变内容的情况下,通过改写句子或替换关键字,将给定的文本从一个领域转换为另一个领域。由于需要,最先进的方法已经发展到适应非并行训练数据,因为经常存在大小不等的多个数据源,其中混合了标记和未标记的句子。此外,每个源中定义的固有样式可能是不同的。不考虑不同组的通用双向(例如,正式/左右/右右/非正式)风格转移可能无法很好地推广到不同的应用程序。在这项工作中,我们开发了一个任务自适应元学习框架,该框架可以使用单个模型同时执行多对文本风格迁移。该方法能够自适应地平衡多任务间元知识的差异。结果表明,我们的方法可以获得更好的定量性能和连贯的风格变化。该方法很好地处理了数据不平衡和域不匹配等常见问题。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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