Abstract:Encouraging a certain number of users to participate in a sensing task continuously for collecting high-quality sensing data under a certain budget is a new challenge in the mobile crowdsensing. The users’ historical reputation reflects their past performance in completing sensing tasks, and users with high historical reputation have outstanding performance in historical tasks. Therefore, this study proposes a reputation constraint incentive mechanism algorithm based on the Stackelberg game to solve the abovem… Show more
“…To collect high-quality of sensing data within the specified budget, it is essential to choose optimal users/volunteers for MCS. The accuracy of the sensing data depends on the coverage of mobile users in the target area and also on the previous reputation of the mobile users [82], [83]. The work in [84] considered these factors for incentivizing the participants using Stackelberg game theory.…”
Section: Depicts the Different Categories Of Incentive Mechanisms In Mcsmentioning
“…To collect high-quality of sensing data within the specified budget, it is essential to choose optimal users/volunteers for MCS. The accuracy of the sensing data depends on the coverage of mobile users in the target area and also on the previous reputation of the mobile users [82], [83]. The work in [84] considered these factors for incentivizing the participants using Stackelberg game theory.…”
Section: Depicts the Different Categories Of Incentive Mechanisms In Mcsmentioning
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