Reference: | [1] Kempe, J. Kleinberg, and E ́. Tardos, Maximizing the spread of influence through a social network, ACM SIGKDD, 2003, pp. 137– 146. [2] W. Chen, Y. Wang, and S. Yang, Efficient influence maximization in social networks, ACM SIGKDD, 2009, pp. 199–208. [3] M. Han, M. Yan, Z. Cai, and Y. Li, An exploration of broader influence maximization in timeliness networks with opportunistic selection. Journal of Network and Computer Applications, 2016. [4] T.Shi, J.Wan, S.Cheng, Z.Cai, Y.Li, and J.Li,“ Time-bounded positive influence in social networks,” in IIKI, 2015. [5] GUO, Bin, et al. Mobile crowd sensing and computing: The review of an emerging human-powered sensing paradigm. ACM Computing Surveys (CSUR), 2015, 48.1: 7 [6] Huadong Ma, Dong Zhao, Peiyan Yuan, et al. Opportunities in mobile crowd sensing. IEEE Communications Magazine, August, 2014. [7] HIGUCHI, Tatsuro, et al. A neighbor collaboration mechanism for mobile crowd sensing in opportunistic networks. Communications (ICC), 2014 IEEE International Conference on. IEEE, 2014. p.42-47. [8] MUN, Min, et al. PEIR, the personal environmental impact report, as a platform for participatory sensing systems research. Proceedings of the 7th international conference on Mobile systems, applications, and services. ACM, 2009. p.55-68. [9] XIANG, Chaocan, et al. Passfit: Participatory sensing and filtering for identifying truthful urban pollution sources. Sensors Journal, IEEE, 2013. [10] GAONKAR, Shravan, et al. Micro-blog: sharing and querying content through mobile phones and social participation. In: Proceedings of the 6th international conference on Mobile systems, applications, and services. ACM, 2008. p. 174-186. [11] N. Eagle and A. Pentland. Reality mining: sensing complex social systems. Personal and Ubiquitous Computing, Vol 10(4):255–268, May 2006. [12] P. Hui, People are the network: experimental design and evaluation of social-based forwarding algorithms, Ph.D. dissertation, UCAM-CL-TR-713. University of Cambridge, Comp.Lab., 2008 [13] Marin, Radu-Corneliu, Ciprian Dobre, and Fatos Xhafa. Exploring Predictability in Mobile Interaction. EIDWT. 2012. [14] HIGUCHI, Tatsuro, et al. A neighbor collaboration mechanism for mobile crowd sensing in opportunistic networks. Communications (ICC), 2014 IEEE International Conference on. IEEE, 2014. p. 42-47. [15] CAI, Ji Li Zhipeng; YAN, Mingyuan; LI, Yingshu. Using crowdsourced data in location-based social networks to explore influence maximization. The 35th Annual IEEE International Conference on Computer Communications (INFOCOM 2016). 2016. [16] QIN, Jun, et al. Post: Exploiting dynamic sociality for mobile advertising in vehicular networks. IEEE Transactions on Parallel and Distributed Systems, 2016. [17] Ruben Mayer, Harshit Gupta, Enrique Saurez, and Umakishore Ramachandran, et al. 2017. The Fog Makes Sense: Enabling Social Sensing Services With Limited Internet Connectivity. ACM New York, 2017. [18] Koustabh Dolui, Soumya Kanti Datta, et al. Comparison of edge computing implementations: Fog computing, cloudlet and mobile edge computing. IEEE Global Internet of Things Summit (GIoTS), 2017. [19] TSAI, Tzu-Chieh; CHAN, Ho-Hsiang. NCCU Trace: social-network-aware mobility trace. Communications Magazine, IEEE, 2015. [20] TSAI, Tzu-Chieh, et al. A Social Behavior Based Interest-Message Dissemination Approach in Delay Tolerant Networks. In: International Conference on Future Network Systems and Security. Springer International Publishing, 2016. p. 62-80. [21] Bin Guo, Zhu Wang, Zhiwen Yu, Yu Wang, Neil Y. Yen, RUNHE HUANG, XINGSHE ZHOU. Mobile Crowd Sensing and Computing: The Review of an Emerging Human-Powered Sensing Paradigm. Journal ACM Computing Surveys (CSUR), Volume 48 Issue 1, September 2015 Article No. 7. [22] Rafael Laufer, Henri Dubois-Ferri"ere, Leonard Kleinrock. Multirate Anypath Routing in Wireless Mesh Networks. IEEE INFOCOM, 2009. [23] H. Li, T. Li, W. Wang and Y. Wang, "Dynamic Participant Selection for Large-Scale Mobile Crowd Sensing," in IEEE Transactions on Mobile Computing. [24] Zhenyu Zhou, Haijun Liao, Bo Gu, Kazi Mohammed Saidul Huq, Shahid Mumtaz, and Jonathan Rodriguez. Robust Mobile Crowd Sensing: When Deep Learning Meets Edge Computing. IEEE Network Volume: 32, Issue: 4, July/August 2018. |