针对众包真实激励机制的假名攻击对策

IF 13.8 1区 计算机科学 Q1 ENGINEERING, ELECTRICAL & ELECTRONIC IEEE Journal on Selected Areas in Communications Pub Date : 2017-02-01 DOI:10.1109/JSAC.2017.2659229
Xiang Zhang, G. Xue, Ruozhou Yu, Dejun Yang, Jian Tang
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引用次数: 16

摘要

众包的激增在环境监测、医疗保健等各个领域带来了机遇和挑战。通常,需要大量用户的合作才能完成众包工作。近年来,众包激励机制的设计引起了研究界的极大兴趣,拍卖是研究界普遍采用的机制之一。然而,这些拍卖中很少有人考虑对假名攻击(也称为sybil攻击)的鲁棒性,在这种攻击中,不诚实的用户生成虚假身份来增加他们的效用,而不付出更多的努力。为了提供针对此类攻击的对策,我们设计了一个针对假名攻击的真实拍卖(TAFA),作为一种基于拍卖的众包激励机制。我们证明了TAFA是真实的、个体理性的、预算平衡的和计算高效的。我们还证明了TAFA提供了对抗假名攻击的对策,因此每个用户最好不要生成任何假名。进行了广泛的性能评估,结果进一步证实了我们的理论分析。
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Countermeasures Against False-Name Attacks on Truthful Incentive Mechanisms for Crowdsourcing
The proliferation of crowdsourcing brings both opportunities and challenges in various fields, such as environmental monitoring, healthcare, and so on. Often, the collaborative efforts from a large crowd of users are needed in order to complete crowdsourcing jobs. In recent years, the design of crowdsourcing incentive mechanisms has drawn much interest from the research community, where auction is one of the commonly adopted mechanisms. However, few of these auctions consider the robustness against false-name attacks (a.k.a. sybil attacks), where dishonest users generate fake identities to increase their utilities without devoting more efforts. To provide countermeasures against such attacks, we have designed a Truthful Auction with countermeasures against False-name Attacks (TAFA) as an auction-based incentive mechanism for crowdsourcing. We prove that TAFA is truthful, individually rational, budget-balanced, and computationally efficient. We also prove that TAFA provides countermeasures against false-name attacks, such that each user is better off not generating any false name. Extensive performance evaluations are conducted and the results further confirm our theoretical analysis.
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来源期刊
CiteScore
30.00
自引率
4.30%
发文量
234
审稿时长
6 months
期刊介绍: The IEEE Journal on Selected Areas in Communications (JSAC) is a prestigious journal that covers various topics related to Computer Networks and Communications (Q1) as well as Electrical and Electronic Engineering (Q1). Each issue of JSAC is dedicated to a specific technical topic, providing readers with an up-to-date collection of papers in that area. The journal is highly regarded within the research community and serves as a valuable reference. The topics covered by JSAC issues span the entire field of communications and networking, with recent issue themes including Network Coding for Wireless Communication Networks, Wireless and Pervasive Communications for Healthcare, Network Infrastructure Configuration, Broadband Access Networks: Architectures and Protocols, Body Area Networking: Technology and Applications, Underwater Wireless Communication Networks, Game Theory in Communication Systems, and Exploiting Limited Feedback in Tomorrow’s Communication Networks.
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