Title
Exploring Human-Like Reading Strategy for Abstractive Text Summarization
Abstract
The recent artificial intelligence studies have witnessed great interest in abstractive text summarization. Although remarkable progress has been made by deep neural network based methods, generating plausible and high-quality abstractive summaries remains a challenging task. The human-like reading strategy is rarely explored in abstractive text summarization, which however is able to improve the effectiveness of the summarization by considering the process of reading comprehension and logical thinking. Motivated by the human-like reading strategy that follows a hierarchical routine, we propose a novel Hybrid learning model for Abstractive Text Summarization (HATS). The model consists of three major components, a knowledge-based attention network, a multitask encoder-decoder network, and a generative adversarial network, which are consistent with the different stages of the human-like reading strategy. To verify the effectiveness of HATS, we conduct extensive experiments on two real-life datasets, CNN/Daily Mail and Gigaword datasets. The experimental results demonstrate that HATS achieves impressive results on both datasets.
Year
DOI
Venue
2019
10.1609/aaai.v33i01.33017362
AAAI
Field
DocType
Volume
Reading strategy,Logical reasoning,Automatic summarization,Generative adversarial network,Reading comprehension,Computer science,Artificial intelligence,Artificial neural network,Machine learning
Conference
33
Citations 
PageRank 
References 
1
0.36
0
Authors
6
Name
Order
Citations
PageRank
Min Yang115541.56
Qiang Qu264.18
Wenting Tu3303.29
Shen Ying47323.48
Zhou Zhao577390.87
Xiaojun Chen61298107.51