Template Based Chinese News Event Summarization

Author(s):  
Ying Han ◽  
Fang Li ◽  
KeBin Liu ◽  
Lei Liu
2019 ◽  
Vol 76 (2) ◽  
pp. 1034-1048
Author(s):  
Shengxiang Gao ◽  
Zhengtao Yu ◽  
Yunlong Li ◽  
Yusen Wang ◽  
Yafei Zhang

Author(s):  
Melissa J. Robinson ◽  
Silvia Knobloch-Westerwick

The informative value of news has often been the focus of mass communication research, but individuals do tune into the news for entertainment purposes. In addition, news organizations frequently add entertainment elements into news stories to increase audience interest. Considering both of these factors, theorizing about the entertainment processes (e.g., appreciation, enjoyment, and suspense) that occur during news consumption is necessary to understand audience behavior. This chapter investigates factors that influence entertainment processes during news consumption. Two entertainment theories in particular (affective disposition theory and the affective news extended model) are reviewed to understand how affective responses influence enjoyment of news. It organizes existing research on affective responses and entertainment processes into two categories focusing on news event characteristics (i.e., elements that journalists cannot change) and message design principles that journalists create or edit. Areas for future research are provided.


Author(s):  
Alton Y. K. Chua ◽  
Dion Hoe-Lian Goh ◽  
Khasfariyati Razikin

2020 ◽  
Vol 34 (05) ◽  
pp. 9410-9417
Author(s):  
Min Yang ◽  
Chengming Li ◽  
Fei Sun ◽  
Zhou Zhao ◽  
Ying Shen ◽  
...  

Real-time event summarization is an essential task in natural language processing and information retrieval areas. Despite the progress of previous work, generating relevant, non-redundant, and timely event summaries remains challenging in practice. In this paper, we propose a Deep Reinforcement learning framework for real-time Event Summarization (DRES), which shows promising performance for resolving all three challenges (i.e., relevance, non-redundancy, timeliness) in a unified framework. Specifically, we (i) devise a hierarchical cross-attention network with intra- and inter-document attentions to integrate important semantic features within and between the query and input document for better text matching. In addition, relevance prediction is leveraged as an auxiliary task to strengthen the document modeling and help to extract relevant documents; (ii) propose a multi-topic dynamic memory network to capture the sequential patterns of different topics belonging to the event of interest and temporally memorize the input facts from the evolving document stream, avoiding extracting redundant information at each time step; (iii) consider both historical dependencies and future uncertainty of the document stream for generating relevant and timely summaries by exploiting the reinforcement learning technique. Experimental results on two real-world datasets have demonstrated the advantages of DRES model with significant improvement in generating relevant, non-redundant, and timely event summaries against the state-of-the-arts.


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