Abstract

Cyber security significantly relies on the dynamic communities in social networks. The location-based social network (LBSN) is a new type of social system that has sprung up recently that. It turns traditional social networks into heterogeneous networks by incorporating location information, which is used as the medium between the real world and the online social networks, thus bringing new challenges to the community discovery problems. This paper proposes a LBSN homogeneous network model (LSHNM) based on the user social relations and temp-spatial behaviors to calculate the user similarity relations in multi-dimensional features and construct LBSN isomorphism network topology, which can be used to improve cyber security practices. After that non-negative matrix decomposition (NMF) is used to find communities from above isomorphism network topology. The experimental results show that the LSHNM can find more satisfactory community structures. (c) 2019 IEEE. Personal use of this material is permitted. Permission from IEEE must be obtained for all other users, including reprinting/ republishing this material for advertising or promotional purposes, creating new collective works for resale or redistribution to servers or lists, or reuse of any copyrighted components of this work in other works

Highlights

  • The Location-Based social network (LBSN) is a new type of social system that has sprung up recently

  • The research methods in traditional social network are no longer meet the current demands under the impact of the new forms of social data

  • In order to achieve above goal, this paper proposes adaptive density clique algorithm and temp-spatial distribution map convolution algorithm (TSDMC)

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Summary

Introduction

The Location-Based social network (LBSN) is a new type of social system that has sprung up recently. It connects the real world and online social network closely by integrating location information into traditional social network, and provides users a brand new social service. The research methods in traditional social network are no longer meet the current demands under the impact of the new forms of social data. Researchers are beginning to delve deeper into LBSN. Community discovery is one of the basic research problems on social network. How to use user social, temporal, spatial and behavioral information contained in new forms of social data to make comprehensive analysis of user characteristics

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