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A Homophily-Free Community Detection Framework for Trajectories with Delayed Responses

Published: 08 May 2019 Publication History

Abstract

Community detection has been widely studied in the areas of social network analysis and recommendation system. However, most existing research focus on cases where relationships are explicit or depend on simultaneous appearance. In this paper, we propose to study the community detection problem where the relationships are not based on simultaneous appearance, but time-delayed appearances. In other words, we aim to capture the relationship where one individual physically follows another individual. In our attempt to capture such relationships, the major challenge is the presence of spatial homophily, i.e., individuals are attracted to locations due to their popularities and not because of communications. In tackling the community detection problem with spatial homophily and delayed responses, we make the following key contributions: (1) We introduce a four-phase framework, which by way of using quantified impacts excludes homophily. (2) To validate the framework, we generate a synthetic dataset based on a known community structure and then infer that community structure. (3) Finally, we execute this framework on a real-world dataset with more than 6,000 taxis in Singapore. Our results are also compared to those of a baseline approach without homophily-elimination.

References

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Nathan Eagle, Alex Sandy Pentland, and David Lazer. 2009. Inferring friendship network structure by using mobile phone data. Proceedings of the National Academy of Sciences 106, 36 (2009), 15274--15278.
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Santo Fortunato. 2010. Community detection in graphs. Physics reports 486, 3--5 (2010), 75--174.
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Gueorgi Kossinets and Duncan J Watts. 2006. Empirical analysis of an evolving social network. Science 311, 5757 (2006), 88--90.
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David Lazer, Alex Sandy Pentland, Lada Adamic, Sinan Aral, Albert Laszlo Barabasi, Devon Brewer, Nicholas Christakis, Noshir Contractor, James Fowler, Myron Gutmann, et al. 2009. Life in the network: the coming age of computational social science. Science 323, 5915 (2009), 721.
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J-P Onnela, Jari Saram�ki, Jorkki Hyv�nen, Gy�rgy Szab�, David Lazer, Kimmo Kaski, J�nos Kert�sz, and A-L Barab�si. 2007. Structure and tie strengths in mobile communication networks. Proceedings of the National Academy of Sciences 104, 18 (2007), 7332--7336.

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Published In

cover image ACM Conferences
AAMAS '19: Proceedings of the 18th International Conference on Autonomous Agents and MultiAgent Systems
May 2019
2518 pages
ISBN:9781450363099

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International Foundation for Autonomous Agents and Multiagent Systems

Richland, SC

Publication History

Published: 08 May 2019

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Author Tags

  1. community detection
  2. hotspot detection
  3. spatial homophily
  4. trajectory simulation

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  • Research-article

Funding Sources

  • The National Research Foundation Singapore under its Corp. Lab @ University scheme
  • Fujitsu Limited as part of the A*STAR-Fujitsu-SMU Urban Computing and Engineering Centre of Excellence

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AAMAS '19
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AAMAS '19 Paper Acceptance Rate 193 of 793 submissions, 24%;
Overall Acceptance Rate 1,155 of 5,036 submissions, 23%

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