Loading [MathJax]/extensions/MathMenu.js
RTRC: a reputation-based incentive game model for trustworthy crowdsourcing service | IEEE Journals & Magazine | IEEE Xplore

RTRC: a reputation-based incentive game model for trustworthy crowdsourcing service


Abstract:

The ubiquity of mobile devices have promoted the prosperity of mobile crowd systems, which recruit crowds to contribute their resources for performing tasks. Yet, due to ...Show More

Abstract:

The ubiquity of mobile devices have promoted the prosperity of mobile crowd systems, which recruit crowds to contribute their resources for performing tasks. Yet, due to the various resource consumption, the crowds may be reluctant to join and contribute information. Thus, the low participation level of crowds will be a hurdle that prevents the adoption of crowdsourcing. A critical challenge for these systems is how to design a proper mechanism such that the crowds spontaneously act as suppliers to contribute accurate information. Most of existing mechanisms ignore either the honesty of crowds or requesters respectively. In this paper, considering the honesty of both, we propose a game-based incentive mechanism, namely RTRC, to stimulate the crowds to contribute accurate information and to motivate the requesters to return accurate feedbacks. In addition, an evolutionary game is designed to model the dynamic of user-strategy selection.
Published in: China Communications ( Volume: 13, Issue: 12, December 2016)
Page(s): 199 - 215
Date of Publication: 31 December 2016
Print ISSN: 1673-5447
Citations are not available for this document.

Cites in Papers - |

Cites in Papers - IEEE (7)

Select All
1.
Guangshun Li, Xueli Gao, Junhua Wu, "Blockchain-Based Device Reputation Assessment in the Industrial Internet of Things", 2024 27th International Conference on Computer Supported Cooperative Work in Design (CSCWD), pp.2674-2679, 2024.
2.
Minkang Xu, Xiaojie Chen, Attila Szolnoki, "Nash Equilibrium in Macro-Task Crowdsourcing Systems With Collective-Effort-Dependent Rewarding", IEEE Transactions on Network Science and Engineering, vol.11, no.3, pp.2689-2702, 2024.
3.
Fugang Cai, Heng Pan, Xueming Si, Zhili Wu, Haiyang Qian, "Incentive Scheme for Shared Parking Space based on NFT", 2022 2nd International Conference on Computer Science and Blockchain (CCSB), pp.26-33, 2022.
4.
Yanrong Huang, Min Chen, "Improve Reputation Evaluation of Crowdsourcing Participants Using Multidimensional Index and Machine Learning Techniques", IEEE Access, vol.7, pp.118055-118067, 2019.
5.
Yanrong Huang, Min Chen, "Multidimensional Reputation Evaluation Model for Crowdsourcing Participants Based on Big Data", 2019 International Conference on High Performance Big Data and Intelligent Systems (HPBD&IS), pp.41-46, 2019.
6.
Lushen Pang, Guoqing Li, Xiaochuang Yao, Yong Lai, "An Incentive Mechanism Based on a Bayesian Game for Spatial Crowdsourcing", IEEE Access, vol.7, pp.14340-14352, 2019.
7.
Rong Zhao, Linshan Jiang, Kaiyue Zhang, Jin Zhang, "An Insurance-Based Framework Against Security Threat in Mobile Crowdsourcing Systems", 2018 IEEE 24th International Conference on Parallel and Distributed Systems (ICPADS), pp.322-329, 2018.

Cites in Papers - Other Publishers (10)

1.
Sébastien Ziegler, Srdjan Krco, Dejan Drajic, Nenad Gligoric, Renáta Radócz, "Crowdsourcing Tools and IOT Labs", Springer Handbook of Internet of Things, pp.883, 2024.
2.
Pijush Kanti Dutta Pramanik, Saurabh Pal, Prasenjit Choudhury, "Mobile crowd computing: potential, architecture, requirements, challenges, and applications", The Journal of Supercomputing, 2023.
3.
Wenhua Huang, Hongyuan Du, Jingyu Feng, Gang Han, Wenbo Zhang, "A dynamic anonymous authentication scheme with trusted fog computing in V2G networks", Journal of Information Security and Applications, vol.79, pp.103648, 2023.
4.
胜男 吴, "Multi-Objective Task Assignment in Spatio-Temporal Crowdsourcing", Computer Science and Application, vol.11, no.03, pp.549, 2021.
5.
Liangguang Wu, Yonghua Xiong, Kang-Zhi Liu, Jinhua She, "Stable Strategy Formation for Mobile Users in Crowdsensing Using Co-Evolutionary Model", Journal of Advanced Computational Intelligence and Intelligent Informatics, vol.25, no.6, pp.1000, 2021.
6.
Xiaoxia Jiang, Youliang Tian, "Rational Delegation of Computation Based on Reputation and Contract Theory in the UC Framework", Security and Privacy in Digital Economy, vol.1268, pp.322, 2020.
7.
Yanrong Huang, Min Chen, "Key Technology Difficulties of Crowdsourcing in Petrochemical Industry", Chemistry and Technology of Fuels and Oils, vol.55, no.5, pp.635, 2019.
8.
Xueqin Liang, Zheng Yan, "A survey on game theoretical methods in Human–Machine Networks", Future Generation Computer Systems, vol.92, pp.674, 2019.
9.
Ying Hu, Yingjie Wang, Yingshu Li, Xiangrong Tong, "An Incentive Mechanism in Mobile Crowdsourcing Based on Multi-Attribute Reverse Auctions", Sensors, vol.18, no.10, pp.3453, 2018.
10.
Quang Tran Minh, Thanh Nguyen Chi, Michel Toulouse, "Toward a Crowdsourcing-Based Urban Flood Mitigation Platform", Proceedings of the Eighth International Symposium on Information and Communication Technology, pp.301, 2017.
Contact IEEE to Subscribe