A Semi-supervised Sensing Rate Learning based CMAB Scheme to Combat COVID-19 by Trustful Data Collection in the Crowd
Jianheng Tang, Kejia Fan, Wenxuan Xie, Luomin Zeng, Feijiang Han,, Guosheng Huang, Tian Wang, Anfeng Liu, Shaobo Zhang

TL;DR
This paper introduces a semi-supervised learning-based auction scheme for recruiting trustworthy workers in mobile crowdsensing, effectively combating false data attacks and improving sensing quality.
Contribution
It proposes a novel SCMABA mechanism combining semi-supervised sensing rate learning with a multi-armed bandit auction for strategic worker recruitment.
Findings
Achieves truthfulness and individual rationality.
Outperforms baseline methods in simulations.
Effectively identifies high-quality workers with limited supervision.
Abstract
The recruitment of trustworthy and high-quality workers is an important research issue for MCS. Previous studies either assume that the qualities of workers are known in advance, or assume that the platform knows the qualities of workers once it receives their collected data. In reality, to reduce costs and thus maximize revenue, many strategic workers do not perform their sensing tasks honestly and report fake data to the platform, which is called False data attacks. And it is very hard for the platform to evaluate the authenticity of the received data. In this paper, an incentive mechanism named Semi-supervision based Combinatorial Multi-Armed Bandit reverse Auction (SCMABA) is proposed to solve the recruitment problem of multiple unknown and strategic workers in MCS. First, we model the worker recruitment as a multi-armed bandit reverse auction problem and design an UCB-based…
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Taxonomy
TopicsAuction Theory and Applications · Mobile Crowdsensing and Crowdsourcing · Blockchain Technology Applications and Security
