基于自适应文档选择的迁移学习改进抽象摘要

Masato Shirai, Kei Wakabayashi
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摘要

基于神经网络的Ive文档摘要是一种很有前途的生成灵活摘要的方法,但需要大量的训练数据。虽然迁移学习可以解决这个问题,但当我们使用与目标领域无关的训练文档时,存在潜在的负面迁移效应,这种效应会降低性能,这在文档摘要任务中尚未得到明确的探讨。在本文中,我们提出了一种从源域中选择对目标摘要有用的训练文档的方法。该方法基于每个源文档和一组目标文档之间单词分布的相似性。我们进一步提出了一种自适应方法,通过选择与测试文档相似的源文档,为每个测试文档构建定制的摘要模型。在实验中,我们证实了负迁移实际上也发生在文档摘要任务中。此外,我们还表明,该方法有效地避免了负迁移问题,提高了摘要性能。
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Improving Abstractive Summarization by Transfer Learning with Adaptive Document Selection
ive document summarization based on neural networks is a promising approach to generate a flexible summary but requires a large amount of training data.While transfer learning can address this issue, there is a potential concern about the negative transfer effect that deteriorates the performance when we use training documents irrelevant to the target domain, which has not been explicitly explored in document summarization tasks.In this paper, we propose a method that selects training documents from the source domain that are expected to be useful for the target summarization.The proposed method is based on the similarity of word distributions between each source document and a set of target documents.We further propose an adaptive approach that builds a custom-made summarization model for each test document by selecting source documents similar to the test document.In the experiment, we confirmed that the negative transfer actually happens also in the document summarization tasks.Additionally, we show that the proposed method effectively avoids the negative transfer issue and improves summarization performance.
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