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Predicting Attributes of User Profile in Social Networks by Analyzing Communities of their Ego-Network

Authors: Chesnokov V.O. Published: 12.04.2017
Published in issue: #2(113)/2017  
DOI: 10.18698/0236-3933-2017-2-66-76

 
Category: Informatics, Computer Engineering and Control | Chapter: System Analysis, Control, and Information Processing  
Keywords: social networks, social graph, community detection, profile prediction

In online social networks, a user is allowed to specify a lot of personal information - attributes. Some users provide only a part of whole information, or do not provide any information about themselves at all. Due to that, inferred hidden attributes are one of the fundamental problems of social analysis. The study proposes a new approach to user's hidden or unspecified attributes prediction. The method is based on analysis of the user's ego-network structure and attributes of its social graph vertices. The developed method was compared wth other methods according to three datasets of users' ego-networks from Facebook, Twitter and VKontakte social networks. It showed high values of F-measure, precision and completeness for predicting the chosen attributes of the user profile such as hometown or school. Using this method with additional data sources an analyst with high precision can reveal the identity of an anonymous social network user by their relations with other users.

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