作者
Nengcheng Chen, Yan Zhang, Wenying Du, Yingbing Li, Min Chen, Xiang Zheng
发表日期
2021/7/1
期刊
Computers, Environment and Urban Systems
卷号
88
页码范围
101629
出版商
Pergamon
简介
Social sensing is an analytical method to study the interaction between human and space through extracting reliable information from massive volunteered information data. During the ongoing COVID-19 pandemic, there are a large number of Internet social sensing data. However, most of them lack geographic attribute. In order to resolve this problem, this paper proposes a convolutional neural network geographic classification model based on keyword extraction and synonym substitution (KE-CNN) which could determine the geographic attribute by extracting the semantic features from text data. Besides, we realizes the non-contact pandemic social sensing and construct the co-word complex network by capturing the spatiotemporal behaviour of a large number of people. Our research found that (1) mining co-word network can obtain most public opinion information of pandemic events, (2) KE-CNN model …
引用总数
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