824
Views
2
CrossRef citations to date
0
Altmetric
Research Articles

Clustering spatio-temporal bi-partite graphs for finding crowdsourcing communities in IoMT networks

& ORCID Icon
Pages 24-48 | Received 20 Oct 2020, Accepted 02 Mar 2021, Published online: 12 Apr 2021

References

  • Alfarrarjeh, A., Emrich, T., & Shahabi, C. (2015, June). Scalable spatial crowdsourcing: A study of distributed algorithms. 2015 16th IEEE International Conference on Mobile Data Management (Vol.1, pp. 134–144). Pittsburgh, PA: IEEE.
  • Annis, A., & Nardi, F. (2019). Integrating VGI and 2D hydraulic models into a data assimilation framework for real time flood forecasting and mapping. Geo-spatial Information Science, 22(4), 223–236.
  • Arbelaitz, O., Gurrutxaga, I., Muguerza, J., Pérez, J. M., & Perona, I. (2013). An extensive comparative study of cluster validity indices. Pattern Recognition, 46(1), 243–256.
  • Aynaud, T., & Guillaume, J. L. (2010, May). Static community detection algorithms for evolving networks. 8th International symposium on modelling and optimization in mobile, Ad Hoc, and wireless networks (pp. 513–519). Avignon, France: IEEE.
  • Blondel, V. D., Guillaume, J. L., Lambiotte, R., & Lefebvre, E. (2008). Fast unfolding of communities in large networks. Journal of Statistical Mechanics: Theory and Experiment, 2008(10), 10008.
  • Boccaletti, S., Latora, V., Moreno, Y., Chavez, M., & Hwang, D. U. (2006). Complex networks: Structure and dynamics. Physics Reports, 424(4–5), 175–308.
  • Boella, G., Calafiore, A., Grassi, E., Rapp, A., Sanasi, L., & Schifanella, C. (2019). FirstLife: Combining social networking and VGI to create an urban coordination and collaboration platform. IEEE Access, 7, 63230–63246.
  • Burke, J., Estrin, D., Hansen, M., Parker, A., Ramanathan, N., Reddy, S., Srivastava, M. B. (2006). Participatory sensing. Proc. of the 4th ACM Sensys Workshops, Toronto, Ontario, Canada.
  • Calabrese, F., Colonna, M., Lovisolo, P., Parata, D., & Ratti, C. (2011). Real-time Urban monitoring using cell phones: A case study in Rome. IEEE Transactions on Intelligent Transportation Systems, 12(1), 141–151.
  • Cisco Systems. (2009). Cisco cloud computing – data center strategy, architecture, and solutions. Point of View White Paper for U.S Public Sector.
  • Clauset, A., Newman, M. E., & Moore, C. (2004). Finding community structure in very large networks. Physical Review E, 70(6), 066111.
  • Davis-Stober, C. P., Budescu, D. V., Dana, J., & Broomell, S. B. (2014). When is a crowd wise? Decision, 1(2), 79.
  • Easley, D., & Kleinberg, J. (2010). Networks, crowds, and markets (Vol. 8). Cambridge: Cambridge university press.
  • Elwood, S., Goodchild, M. F., & Sui, D. Z. (2012). Researching volunteered geographic information: Spatial data, geographic research, and new social practice. Annals of the Association of American Geographers, 102(3), 571–590.
  • Eubank, S., Guclu, H., Kumar, V. A., Marathe, M. V., Srinivasan, A., Toroczkai, Z., & Wang, N. (2004). Modelling disease outbreaks in realistic urban social networks. Nature, 429(6988), 180–184.
  • Farkas, K. (2020). Participatory sensing framework. In Nanosensors for smart cities (pp. 543–553). Amsterdam, Netherlands: Elsevier.
  • Feese, S., Burscher, M. J., Jonas, K., & Tröster, G. (2014). Sensing spatial and temporal coordination in teams using the smartphone. Human-centric Computing and Information Sciences, 4(1), 15.
  • Guillaume, J., & Latapy, M. (2006). Bi-partite graphs as models of complex networks. Physica A: Statistical Mechanics and Its Applications, 371(2), 795–813.
  • Guo, B., Yu, Z., Zhou, X., & Zhang, D. (2014, March). From participatory sensing to mobile crowd sensing. 2014 IEEE International Conference on Pervasive Computing and Communication Workshops (PERCOM WORKSHOPS) (pp. 593–598). Budapest, Hungary: IEEE.
  • Hossain, M., & Kauranen, I. (2015). Crowdsourcing: A comprehensive literature review. Strategic Outsourcing: An International Journal, 8(1), 2–22.
  • Kazemi, L., Shahabi, C., & Chen, L. (2013, November). Geotrucrowd: Trustworthy query answering with spatial crowdsourcing. Proceedings of the 21st acm sigspatial international conference on advances in geographic information systems (pp. 314–323). Orlando, FL.
  • Klonner, C., Marx, S., Usón, T., Porto de Albuquerque, J., & Höfle, B. (2016). Volunteered geographic information in natural hazard analysis: A systematic literature review of current approaches with a focus on preparedness and mitigation. ISPRS International Journal of Geo-Information, 5(7), 103.
  • Kong, X., Liu, X., Jedari, B., Li, M., Wan, L., & Xia, F. (2019). Mobile crowdsourcing in smart cities: Technologies, applications, and future challenges. IEEE Internet of Things Journal, 6(5), 8095–8113.
  • Kumar, J. S., & Zaveri, M. A. (2016, December). Graph based clustering for two-tier architecture in Internet of Things. 2016 IEEE International Conference on Internet of Things (iThings) and IEEE Green Computing and Communications (GreenCom) and IEEE Cyber, Physical and Social Computing (CPSCom) and IEEE Smart Data (SmartData) (pp. 229–233). Chengdu, China: IEEE.
  • Larremore, D. B., Clauset, A., & Jacobs, A. Z. (2014). Efficiently inferring community structure in bi-partite networks. Physical Review E, 90(1), 012805.
  • Lashkari, B., Rezazadeh, J., Farahbakhsh, R., & Sandrasegaran, K. (2019). Crowdsourcing and sensing for indoor localization in IoT: A review. IEEE Sensors Journal, 19(7), 2408–2434.
  • Lin, J. W., Chelliah, P. R., Hsu, M. C., & Hou, J. X. (2019). Efficient fault-tolerant routing in IoT wireless sensor networks based on bi-partite-flow graph modeling. IEEE Access, 7, 14022–14034.
  • Liu, X., & Murata, T. (2010). Community detection in large-scale bi-partite networks. Transactions of the Japanese Society for Artificial Intelligence, 25(1), 16–24.
  • Misra, M., & Narendra, N. (2016). Research challenges in the Internet of Mobile Things. IEE IoT Newsletter, 56, 684–700.
  • Newman, M. E. (2006). Finding community structure in networks using the eigenvectors of matrices. Physical Review E, 74(3), 036104.
  • Ogie, R. I. (2016). Adopting incentive mechanisms for large-scale participation in mobile crowdsensing: From literature review to a conceptual framework. Human-centric Computing and Information Sciences, 6(1), 6–24.
  • Papadopoulos, S., Kompatsiaris, Y., Vakali, A., & Spyridonos, P. (2011). Community detection in social media. Data Mining and Knowledge Discovery, 24(3), 515–554.
  • Petrovic, S. (2006, October). A comparison between the silhouette index and the davies-bouldin index in labelling ids clusters. In Proceedings of the 11th Nordic Workshop of Secure IT Systems (Vol. 2006, pp. 53–64). Linköping, Sweden: sn.
  • Pons, P., & Latapy, M. (2005, October). Computing communities in large networks using random walks. International symposium on computer and information sciences (pp. 284–293). Istanbul, Turkey: Springer.
  • Raghavan, U. N., Albert, R., & Kumara, S. (2007). Near linear time algorithm to detect community structures in large-scale networks. Physical Review E, 76(3), 036106.
  • Reichardt, J., & Bornholdt, S. (2006). Statistical mechanics of community detection. Physical Review E, 74(1), 016110.
  • Rendón, E., Abundez, I., Arizmendi, A., & Quiroz, E. M. (2011). Internal versus external cluster validation indexes. International Journal of Computers and Communications, 5(1), 27–34.
  • Rosvall, M., & Bergstrom, C. T. (2008). Maps of random walks on complex networks reveal community structure. Proceedings of the National Academy of Sciences, 105(4), 1118–1123.
  • Senaratne, H., Mobasheri, A., Ali, A. L., Capineri, C., & Haklay, M. (2017). A review of volunteered geographic information quality assessment methods. International Journal of Geographical Information Science, 31(1), 139–167.
  • Sui, D., Elwood, S., & Goodchild, M. (Eds.). (2012). Crowdsourcing geographic knowledge: Volunteered geographic information (VGI) in theory and practice. Dordrecht, Netherlands: Springer Science & Business Media.
  • Suran, S., Pattanaik, V., & Draheim, D. (2020). Frameworks for collective intelligence: A systematic literature review. ACM Computing Surveys (CSUR), 53(1), 1–36.
  • Tong, Y., She, J., Ding, B., Wang, L., & Chen, L. (2016, May). Online mobile micro-task allocation in spatial crowdsourcing. 2016 IEEE 32Nd international conference on data engineering (ICDE) (pp. 49–60). Helsinki, Finland: IEEE.
  • van Dongen, S. (2000). Graph clustering by flow simulation [Ph. D. Thesis]. Dutch National Research Institute for Mathematics and Computer Science.
  • Wazny, K. (2017). “Crowdsourcing” ten years in: A review. Journal of Global Health, 7(2), 020602.
  • Xu, Z., Mei, L., Choo, K. K. R., Lv, Z., Hu, C., Luo, X., & Liu, Y. (2018). Mobile crowd sensing of human-like intelligence using social sensors: A survey. Neurocomputing, 279, 3–10.
  • Zha, H., He, X., Ding, C., Simon, H., & Gu, M. (2001, October). Bi-partite graph partitioning and data clustering. Proceedings of the tenth international conference on Information and knowledge management (pp. 25–32). Hong Kong.
  • Zhou, T., Ren, J., Medo, M., & Zhang, Y. C. (2007). Bi-partite network projection and personal recommendation. Physical Review E, 76(4), 046115.