Hybrid MemNet for Extractive Summarization

A. Singh, Manish Gupta, Vasudeva Varma
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引用次数: 12

Abstract

Extractive text summarization has been an extensive research problem in the field of natural language understanding. While the conventional approaches rely mostly on manually compiled features to generate the summary, few attempts have been made in developing data-driven systems for extractive summarization. To this end, we present a fully data-driven end-to-end deep network which we call as Hybrid MemNet for single document summarization task. The network learns the continuous unified representation of a document before generating its summary. It jointly captures local and global sentential information along with the notion of summary worthy sentences. Experimental results on two different corpora confirm that our model shows significant performance gains compared with the state-of-the-art baselines.
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用于抽取摘要的混合MemNet
摘要文摘一直是自然语言理解领域一个广泛研究的问题。虽然传统的方法主要依赖于手动编译的特征来生成摘要,但很少有人尝试开发用于提取摘要的数据驱动系统。为此,我们提出了一个完全数据驱动的端到端深度网络,我们称之为混合MemNet,用于单文档摘要任务。网络在生成摘要之前学习文档的连续统一表示。它联合捕获局部和全局的句子信息以及总结句子的概念。在两种不同的语料库上的实验结果证实,与最先进的基线相比,我们的模型显示出显著的性能提升。
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