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Adversarial Domain Adaptation Using Artificial Titles for Abstractive Title Generation

机译:使用人工标题对抽象标题生成的对抗域适应

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A common issue in training a deep learning, abstractive summarization model is lack of a large set of training summaries. This paper examines techniques for adapting from a labeled source domain to an unlabeled target domain in the context of an encoder-decoder model for text generation. In addition to adversarial domain adaptation (ADA), we introduce the use of artificial titles and sequential training to capture the grammatical style of the unlabeled target domain. Evaluation on adapting to/from news articles and Stack Exchange posts indicates that the use of these techniques can boost performance for both unsupervised adaptation as well as fine-tuning with limited target data.
机译:培训深度学习的一个共同问题,抽象摘要模型缺乏大量训练摘要。本文检查了在文本生成的编码器 - 解码器模型的上下文中将标记的源域中调整到未标记的目标域的技术。除了对抗域适应(ADA)之外,我们还介绍了人工标题和顺序训练,以捕获未标记的目标域的语法风格。适应新闻文章和堆栈交换帖子的评估表明,使用这些技术可以提高无监督的适应性的性能以及具有有限目标数据的微调。

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