Abstract
Social network structure modeling is the basis of other fields of social network research, aiming to build a reasonable social network structure model. However, due to privacy protection and many other reasons, it is almost impossible to obtain all the data needed to construct the social network structure model, so it is necessary to study the use of incomplete data to construct the social network structure model. Although there are many methods to construct social network structure model, there are some problems. The research shows that human social group behavior shows some specific behavior patterns, and there are many corresponding structures and changes within the group. The main means adopted by smart city is information and communication technology to study, plan and sense multiple key information of urban internal operation system, that is, it can intelligently interact with different needs of public security, urban services, people’s livelihood, environmental protection, industrial and commercial projects. The key lies in the adoption of high-end information sensing means, so that the city can operate and manage intelligently, improve the quality of life of urban people, and promote social harmony and long-term development. Therefore, this paper studies the next generation social network system of smart city based on software reconfiguration model and cognitive computing. We design the model based on the improvement of the traditional social networks to obtain the efficient representation and combine the software reconstruction model to improve the robustness. Through comparing the model with the state-of-the-art methods, the performance of the model is validated.
Similar content being viewed by others
Availability of data and material
Data are available on request to the corresponding author.
References
Arooj A, Farooq MS, Umer T, Rasool G, Wang Bo (2020) Cyber physical and social networks in IoV (CPSN-IoV): a multimodal architecture in edge-based networks for optimal route selection using 5G technologies. IEEE Access 8:33609–33630
Camps-Mur D, Garcia-Saavedra A, Serrano P (2013) Device-to-device communications with Wi-Fi Direct: overview and experimentation. IEEE Wirel Commun 20(3):96–104
Candea C, Palumbo F, Girolami M, Segato D, Candea GS (2021) System interoperability for next gen services at home. A challenge/opportunity for integration. In: Digital health technology for better aging. Springer, Cham, pp 129–144
Chhabra R, Vohra U, Khanna V, Verman A, Tanwar P, Kumar B (2020) The next gen election: design and development of e-voting web application. In: 2020 5th international conference on communication and electronics systems (ICCES). IEEE, pp 536–541
Cohen R, Havlin S (2003) Scale-free networks are ultrasmall. Phys Rev Lett 90(5):58–61
Counts S (2007) Group-based mobile messaging in support of the social side of leisure. Comput Support Cooprk 16(1–2):2007
Couzin ID (2009) (2009) Collective cognition in animal groups. Trends Cogn Sci 13(1):36–43
Ezat Gharieb M (2021) The effect of online marketing through social media platforms on Saudi Public Libraries. J Inf Technol Manag 13:238–262
Gao Y, Yang L, Liu C et al (2013) Research on friend recommendation algorithm based on content and social filtering. Microcomput Appl 32(14):75–78
Helbing D, Molnar P (1997) Self-organization phenomena in pedestrian crowds. Self-organization of Complex Structures: From Individual to Collective Dynamics.[S.l.]: Gordon and Breach, 1997, pp 569–577
Hirsch T, Henry J (2005) Txlmob:text messaging for protest swarms[R]. In: CHI extended abstracts, 2005
Hübsch C, Waldhorst OP, Hock M (2012) Distributed WiFi detection and integration in dense urban mobile Peer-to-Peer networks. Peer-to-Peer Netw Appl 5(4):323–339
Jiang J, Wilson C, Wang X et al (2010) Understanding latent interactions in online social networks. In: Proceedings of the 10th ACM SIGCOMM conference on Internet measurement, pp 369–382
Liang Y, Ouyang K, Jing L, Ruan S, Liu Y, Zhang J, Rosenblum DS, Zheng Y (2019) Urbanfm: inferring fine-grained urban flows. In: proceedings of the 25th ACM SIGKDD international conference on knowledge discovery & data mining, pp 3132–3142
Liang Y, Ouyang K, Wang Y, Liu Y, Zhang J, Zheng Y, Rosenblum DS (2020) Revisiting convolutional neural networks for citywide crowd flow analytics. arXiv preprint arrXiv:2003.00895
Liu B (2011) Research and implementation of mobile social network platform. Beijing University of Posts and telecommunications, 2011
Liu Y, Zhang L, Nie L, Yan Y, Rosenblum D (2016a) Fortune teller: predicting your career path. In: Proceedings of the AAAI conference on artificial intelligence, vol. 30, no. 1
Liu Y, Zheng Y, Liang Y, Liu S, Rosenblum DS (2016) Urban water quality prediction based on multi-task multi-view learning
Ludford PJ, Frankowski D, Reily K et al (2006) Because I carry my cell phone anyway: functional location-based reminder applications. Sigchi Conference on Human Factors in Computing Systems 2006:889–898
Moussaid M, Garnier S, Theraulaz G et al (2010) Collective information processing and pattern formation in swarms, flocks, and crowds. Top Cogn Sci 1(3):469–497
Nan L, Chen G (2009) Multi-layered friendship modeling for location-based Mobile Social Networks. In: Mobile and ubiquitous systems: networking and 4. Services, mobiquitous, mobiquitous 09, Annual International. IEEE, 2009, pp 1–10
Ouyang K, Liang Y, Liu Y, Tong Z, Ruan S, Rosenblum D, Zheng Y (2020) Fine-grained urban flow inference. IEEE Trans Knowl Data Eng
Preoţiuc-Pietro D, Liu Y, Hopkins D, Ungar L (2017) Beyond binary labels: political ideology prediction of twitter users. In: Proceedings of the 55th annual meeting of the association for computational linguistics (Volume 1: Long Papers), pp 729–740
Smys S, Basar A, Wang H (2020) Hybrid intrusion detection system for internet of Things (IoT). J ISMAC 2(04):190–199
Tahsin T, Choudhury LF, Rahman ML (2008) Peer-to-peer mobile applications using JXTA/JXME. In: Proceedings of 11th international conference on computer and information technology (ICCIT2008), 25–27 December, 2008, Khulna, Bangladesh
Tai K (2013) Research and implementation of audio and video sharing system based on WiFi direct [D]. Beijing University of Posts and telecommunications, 2013
Veselova L, Rekunenko T (2021) Ensuring the stability of Ukraine’s cybersecurity system in the current context. In: International conference on economics, law and education research (ELER 2021). Atlantis Press, pp 163–167
von Arb M, Bader M, KuhIl M et al (2008) Veneta: serverless friend-of-friend detection in mobile social networking[R]. In: WiMob, 2008
Wang H, Li Z, Li Y, Gupta BB, Choi C (2020) Visual saliency guided complex image retrieval.". Pattern Recogn Lett 130:64–72
Wasserman S, Faust K (2011) Social network analysis. Encyclop Soc Netw Anal Min 22(Suppl 1):109–127
Xiaofeng P (2013) Offloading mobile data from cellular networks through peer-to-peer WiFi communication: a subscribe-and-send architecture. Wireless Communication over Zigbee for Automotive Inclination Measurement China Communications 10(6):35–46
Xu J (2013) Topological structure and analysis of interconnection networks. Springer, Berlin
Yali C (2009) Design and implementation of social network based services in mobile environment [D]. Beijing University of Posts and telecommunications, 2009.
Yu S, Xia X, Wang X (2011) Overview of mobile social network. In: 2011 National Conference on network and information security
Yunning Y (2012) Development of mobile social networking client based on system. Shandong University, Shandong, p 2012
Author information
Authors and Affiliations
Corresponding author
Ethics declarations
Conflict of interest
No conflicts of interest or competing interests to declare.
Additional information
Publisher's Note
Springer Nature remains neutral with regard to jurisdictional claims in published maps and institutional affiliations.
Rights and permissions
About this article
Cite this article
Yuan, F. Smart city next-gen social networks system based on software reconstruction model and cognitive computing. Soc. Netw. Anal. Min. 11, 96 (2021). https://doi.org/10.1007/s13278-021-00807-2
Received:
Revised:
Accepted:
Published:
DOI: https://doi.org/10.1007/s13278-021-00807-2