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基于网络节点中心性的新闻重要性评价研究
引用本文:曹开臣,陈明仁,张千明,蔡世民,周涛. 基于网络节点中心性的新闻重要性评价研究[J]. 电子科技大学学报(自然科学版), 2021, 50(2): 285-293. DOI: 10.12178/1001-0548.2020355
作者姓名:曹开臣  陈明仁  张千明  蔡世民  周涛
作者单位:1.西南电子技术研究所 成都 610036
基金项目:国家自然科学基金(61703074,11975071)
摘    要:评价权威报刊的新闻重要性对于正确理解国家政策变化具有重要意义.该文以《人民日报》为例,抽取发表在1946-2008年期间的新闻,利用其内容相似性构建新闻网络.从复杂网络视角,一篇新闻与其他新闻的相似性越高,其在新闻网络中连接越紧密,具有较大的节点中心性.鉴于此,该文将H指数引入PageRank排序算法,提出H-Page...

关 键 词:H-PageRank排序算法  新闻重要性评价  新闻网络  节点中心性  表示学习
收稿时间:2020-09-18

Research on Importance Evaluation of News Based on Nodal Centralities of Complex Network
Affiliation:1.Southwest Institute of Electronic Technology Chengdu 6100362.Big Data Research Center, University of Electronic Science and Technology of China Chengdu 611731
Abstract:It is of great significance to correctly evaluate the importance of news in national newspapers and magazines for better understanding the changes of national policies. In this paper, we take People’s Daily as an example, extract news published in 1946?2008, and construct news network by using their content-based similarities. In the view of complex network, news has higher similarities with others, making it be closely connected and larger nodal centrality in news network. In respect to this, we propose an H-PageRank ranking algorithm by introducing the H-index to improve the PageRank ranking algorithm. In the experiment, all news in People’s Daily is divided into four stages according to their styles and editions in different governing times, which is respectively used to construct news networks based on representation learning. The experimental results show that 1) the topologies of four news networks all have a general properties of complex network, including the high clustering coefficients, positive assortativity coefficients and approximately power-law degree distributions; 2) each news network presnets a mostly similar AUC calculated by the global rank score of the front-page news according to diverse nodal centralities, however the precision, recall and F1-score calculated by the Top-N evaluating model according to the H-PageRank centrality are optimal, which validate the efficiency of local ranking news according to the H-PageRank centrality; 3) the precision of each news network is significantly superior to the theoretical baselines even when the ranking list is restricted into different length, which suggests the roubustness of evaluating model.
Keywords:
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