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Social Network Generation and Role Determination Based on Smartphone Data

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 Added by Mustafa Akbas
 Publication date 2013
and research's language is English




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We deal with the problem of automatically generating social networks by analyzing and assessing smartphone usage and interaction data. We start by assigning weights to the different types of interactions such as messaging, email, phone calls, chat and physical proximity. Next, we propose a ranking algorithm which recognizes the pattern of interaction taking into account the changes in the collected data over time. Both algorithms are based on recent findings from social network research.



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