Space, time, and disease on social media: a case study of dengue fever in China

Q3 Social Sciences
Geomatica Pub Date : 2018-12-01 DOI:10.1139/GEOMAT-2018-0016
Junfang Gong, Shengwen Li, J. Lee, J. Lee
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引用次数: 0

Abstract

It is possible to generate real-time and location-by-location data of many types of human dynamic events based on social media information for the awareness of events in public health. Analyzing these events is useful in understanding spatiotemporal trends and patterns of how diseases spread and also provides indications for users’ sentiment about the concerned disease. This article examines the spatial and temporal patterns of social media posts based on the content, attributes, and follower activities of posts on social media. We describe the spatial features of the topic discussed in the posts and the spatial relationship among comments on the posts. We present models for describing the diffusion process of these posts and for exploring their spatiotemporal patterns. Our results suggest that (1) the long-term trends of the topics in users’ views seem to be stable, (2) results from analyzing follower activities of posts are critical in describing the spatial patterns of the posts, and (3) the diffusion process of an event in social media is still similar to that of a traditional information diffusion model. Our findings are useful for understanding social media and social events. The processes we describe in this article suggest a standard form of analysis that can be adopted for extracting spatiotemporal patterns of information diffusion and for data mining in social media posts.
社交媒体上的空间、时间和疾病:以中国登革热为例
可以根据社交媒体信息生成多种类型的人类动态事件的实时和逐位置数据,以提高对公共卫生事件的认识。分析这些事件有助于了解疾病传播的时空趋势和模式,并为用户对有关疾病的看法提供指示。本文根据社交媒体上帖子的内容、属性和关注者活动来研究社交媒体帖子的空间和时间模式。我们描述了帖子中讨论的主题的空间特征以及帖子评论之间的空间关系。我们提出了描述这些岗位的扩散过程和探索其时空模式的模型。我们的研究结果表明:(1)用户观点中的话题的长期趋势似乎是稳定的;(2)分析帖子的关注者活动的结果对于描述帖子的空间格局至关重要;(3)事件在社交媒体中的扩散过程仍然与传统的信息扩散模型相似。我们的发现有助于理解社交媒体和社会事件。我们在本文中描述的过程提出了一种标准的分析形式,可用于提取信息扩散的时空模式和社交媒体帖子中的数据挖掘。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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来源期刊
Geomatica
Geomatica Social Sciences-Geography, Planning and Development
CiteScore
1.50
自引率
0.00%
发文量
7
期刊介绍: Geomatica (formerly CISM Journal ACSGC), is the official quarterly publication of the Canadian Institute of Geomatics. It is the oldest surveying and mapping publication in Canada and was first published in 1922 as the Journal of the Dominion Land Surveyors’ Association. Geomatica is dedicated to the dissemination of information on technical advances in the geomatics sciences. The internationally respected publication contains special features, notices of conferences, calendar of event, articles on personalities, review of current books, industry news and new products, all of which keep the publication lively and informative.
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