Cross-Community Sensing and Mining (CSM)

نویسندگان

  • Bin Guo
  • Zhiwen Yu
  • Daqing Zhang
  • Xingshe Zhou
چکیده

With the developments in ICT techniques, people are involving in and connecting via various forms of communities in the cyber-physical space, such as online communities, opportunistic (offline) social networks, and location-based social networks. Different communities have distinct features and strengths. With humans playing the bridge role, these communities are implicitly interlinked. In contrast to the existing studies that mostly consider a single community, this paper addresses the interaction among distinct communities. In particular, we present an emerging research area – cross-community sensing and mining (CSM), which aims to connect heterogeneous, cross-space communities by revealing the complex linkage and interplay among their properties and identifying human behavior patterns by analyzing the data sensed/collected from multicommunity environments. The paper describes and discusses the research background, characters, general framework, research challenges, as well as our practice of CSM.

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تاریخ انتشار 2014