利用社交媒体的地理位置数据了解活动地点选择和生活方式的社会影响

Q1 Computer Science Frontiers in ICT Pub Date : 2016-06-20 DOI:10.3389/fict.2016.00010
Samiul Hasan, S. Ukkusuri, Xianyuan Zhan
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引用次数: 28

摘要

社交媒体签到服务使人们能够分享他们与活动相关的选择,为人类活动和社交网络数据提供了新的来源。来自这些服务的地理位置数据以新的方式为我们提供信息,以了解社会对个人选择的影响。在本文中,我们从社交媒体签到数据调查社会对个人活动和生活方式选择的影响程度。我们首先通过连接两个社交媒体系统(Twitter和Foursquare)来收集用户签到和他们的社交网络信息,并分析底层社交网络的结构。接下来,我们使用主题模型推断用户签入和地理生活方式模式。我们分析了社会关系与个体层面模式之间的相关性。我们调查是否两个个人有相似的活动选择和地理生活方式模式,如果他们是社会联系。我们发现,两个用户在签到行为和生活方式模式上的相似性随着友谊概率的增加而增加。
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Understanding Social Influence in Activity Location Choice and Lifestyle Patterns Using Geolocation Data from Social Media
Social media check-in services have enabled people to share their activity-related choices providing a new source of human activity and social networks data. Geo-location data from these services offers us information, in new ways, to understand social influence on individual choices. In this paper, we investigate the extent of social influence on individual activity and life-style choices from social media check-in data. We first collect user check-ins and their social network information by linking two social media systems (Twitter and Foursquare) and analyze the structure of the underlying social network. We next infer user check-in and geo life-style patterns using topic models. We analyze the correlation between the social relationships and individual-level patterns. We investigate whether or not two individuals have similar activity choice and geo life-style patterns if they are socially connected. We find that the similarity between two users, in their check-in behavior and life-style patterns, increases with the increase of the friendship probability.
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Frontiers in ICT
Frontiers in ICT Computer Science-Computer Networks and Communications
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