文本摘要中语义内容泛化对指针生成器网络的影响

Yixuan Wu, Kei Wakabayashi
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引用次数: 1

摘要

语义内容泛化是一种文本摘要方法,通过用泛化术语代替某些短语(如命名实体)来降低神经网络训练的难度。语义内容泛化在提高序列到序列注意模型的性能方面取得了显著的效果。此外,指针生成器网络可以简化基于从原始文本复制单词的机制的摘要训练,这与语义内容泛化具有相似的思想。本工作的目的是测试和验证语义内容泛化对指针生成器网络的影响。因此,我们使用语义内容泛化预处理,然后将其与指针生成器网络相结合。我们通过使用CNN/DailyMail数据集的实验来检验性能。通过实验,我们发现语义内容泛化可以提高指针生成器网络的性能。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Effect of Semantic Content Generalization on Pointer Generator Network in Text Summarization
Semantic content generalization is a method for text summarization that reduces the difficulty of training of neural networks by replacing some phrases such as named entities with generalized terms. The semantic content generalization has achieved remarkable results in enhancing the performance of the sequence to sequence attention model. Besides that, the pointer generator network could ease the training of the summarization based on a mechanism that copies words from the original text, which shares a similar idea with semantic content generalization. The purpose of this work is to test and verify the effect of semantic content generalization on the pointer generator network. Therefore, we use the preprocessing of semantic content generalization and then combine it with the pointer generator network. We examine the performance through an experiment using CNN/DailyMail dataset. From the experiment, we found that the semantic content generalization can improve the performance of the pointer generator network.
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