Exploiting Topic-Based Adversarial Neural Network for Cross-Domain Keyphrase Extraction

Yanan Wang, Qi Liu, Chuan Qin, Tong Xu, Yijun Wang, Enhong Chen, Hui Xiong
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引用次数: 18

Abstract

Keyphrases have been widely used in large document collections for providing a concise summary of document content. While significant efforts have been made on the task of automatic keyphrase extraction, existing methods have challenges in training a robust supervised model when there are insufficient labeled data in the resource-poor domains. To this end, in this paper, we propose a novel Topic-based Adversarial Neural Network (TANN) method, which aims at exploiting the unlabeled data in the target domain and the data in the resource-rich source domain. Specifically, we first explicitly incorporate the global topic information into the document representation using a topic correlation layer. Then, domain-invariant features are learned to allow the efficient transfer from the source domain to the target by utilizing adversarial training on the topic-based representation. Meanwhile, to balance the adversarial training and preserve the domain-private features in the target domain, we reconstruct the target data from both forward and backward directions. Finally, based on the learned features, keyphrase are extracted using a tagging method. Experiments on two realworld cross-domain scenarios demonstrate that our method can significantly improve the performance of keyphrase extraction on unlabeled or insufficiently labeled target domain.
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利用基于主题的对抗神经网络进行跨域关键词提取
关键字已广泛用于大型文档集合中,以提供文档内容的简明摘要。虽然在关键词自动提取方面已经做出了很大的努力,但当资源贫乏的领域中标记数据不足时,现有的方法在训练鲁棒监督模型方面存在挑战。为此,本文提出了一种新的基于topic的对抗神经网络(TANN)方法,该方法旨在利用目标域中的未标记数据和资源丰富的源域中的数据。具体来说,我们首先使用主题相关层显式地将全局主题信息合并到文档表示中。然后,通过对基于主题的表示进行对抗性训练,学习域不变特征,从而实现从源域到目标域的有效转移。同时,为了平衡对抗性训练和保留目标域的域私有特征,我们从前向和后向重构目标数据。最后,基于学习到的特征,使用标注方法提取关键词。实验结果表明,该方法可以显著提高未标记或标记不足目标域的关键词提取性能。
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