Geo-Location Identification of Facebook Pages.

ASONAM '18: International Conference on Advances in Social Networks Analysis and Mining Barcelona Spain August, 2018(2018)

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摘要
Online Social Network (OSN) communities serve as different platforms for multiple users' interaction - people behaving diversely among distinctive communities - such as entertainment, global and local discussion communities. However, attribute identification among online discussion communities remain largely unexplored. In this paper, we describe and analyze the geo-location property of large-scale Facebook public pages (15M pages). We propose a framework utilizing the connectivity of the page-like graph to predict the missing geo-location information based on Breadth-First Search (BFS). Our method achieves a satisfyingly high accuracy (89%) on identifying the state location attribute of unknown United States (US) pages. Our empirical results offer a better understanding of regional social analysis and target audience broadcasting.
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关键词
Facebook pages,Online Social Network communities,OSN,online discussion communities,large-scale Facebook public pages,page-like graph,state location attribute,regional social analysis,target audience broadcasting,geolocation information,geolocation identification,geolocation property,breadth-first search
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