FluMapper: an interactive CyberGIS environment for massive location-based social media data analysis

Anand Padmanabhan, Shaowen Wang, G. Cao, Myunghwa Hwang, Yanli Zhao, Zhenhua Zhang, Yizhao Gao
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引用次数: 22

Abstract

Social media, such as social network (e.g., Facebook), microblogs (e.g. Twitter) have experienced a spectacular rise in popularity, and attracting hundreds of millions of users generating unprecedented amount of information. Twitter, for example, has rapidly gained approximately 500 million registered users as of 2012, generating 340 million tweets daily. Although each tweet is limited to only 140 characters, the aggregate of millions of tweets may provide a realistic representation of landscapes for a certain topic of interest. Furthermore, with widespread use of location aware mobile devices, users are sharing their whereabouts through social media services. This has resulted in a dramatic increase in volume of spatial data and they are becoming a crucial attribute of social media. These location-based social media thus could provide valuable insights to understanding many geographic phenomena. Recent studies capitalizing on social networking and media data show significant societal impacts, in many areas including infectious disease tracking [1].
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FluMapper:用于大规模基于位置的社交媒体数据分析的交互式网络地理信息系统环境
社交网络(如Facebook)、微博(如Twitter)等社交媒体的受欢迎程度急剧上升,吸引了数亿用户,产生了前所未有的信息量。以Twitter为例,截至2012年,它已经迅速获得了大约5亿注册用户,每天产生3.4亿条推文。虽然每条推文被限制在140个字符以内,但数百万条推文的总和可能会为某个感兴趣的主题提供一个真实的风景表现。此外,随着位置感知移动设备的广泛使用,用户正在通过社交媒体服务分享他们的位置。这导致了空间数据量的急剧增加,它们正在成为社交媒体的一个关键属性。因此,这些基于位置的社交媒体可以为理解许多地理现象提供有价值的见解。最近利用社交网络和媒体数据的研究显示了重大的社会影响,包括传染病追踪[1]。
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