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Multiview Convolutional Neural Networks for Multidocument Extractive Summarization

机译:用于多文档提取摘要的多视图卷积神经网络

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摘要

Multidocument summarization has gained popularity in many real world applications because vital information can be extracted within a short time. Extractive summarization aims to generate a summary of a document or a set of documents by ranking sentences and the ranking results rely heavily on the quality of sentence features. However, almost all previous algorithms require hand-crafted features for sentence representation. In this paper, we leverage on word embedding to represent sentences so as to avoid the intensive labor in feature engineering. An enhanced convolutional neural networks (CNNs) termed multiview CNNs is successfully developed to obtain the features of sentences and rank sentences jointly. Multiview learning is incorporated into the model to greatly enhance the learning capability of original CNN. We evaluate the generic summarization performance of our proposed method on five Document Understanding Conference datasets. The proposed system outperforms the state-of-the-art approaches and the improvement is statistically significant shown by paired t-test.
机译:由于可以在短时间内提取重要信息,因此多文档摘要已在许多实际应用中得到普及。摘录摘要旨在通过对句子进行排名来生成一个文档或一组文档的摘要,并且排名结果在很大程度上取决于句子特征的质量。但是,几乎所有以前的算法都需要手工制作的功能来表示句子。在本文中,我们利用单词嵌入来表示句子,从而避免了特征工程中的繁琐工作。成功开发了称为多视图CNN的增强型卷积神经网络(CNN),以共同获得句子的特征和对句子进行排名。模型中加入了多视图学习,以大大增强原始CNN的学习能力。我们在五个文档理解会议数据集上评估了我们提出的方法的一般总结性能。拟议的系统优于最新方法,并且配对t检验显示出统计学上的显着改善。

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