2024
DOI: 10.3390/s24020509
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Self-Interested Coalitional Crowdsensing for Multi-Agent Interactive Environment Monitoring

Xiuwen Liu,
Xinghua Lei,
Xin Li
et al.

Abstract: As a promising paradigm, mobile crowdsensing (MCS) takes advantage of sensing abilities and cooperates with multi-agent reinforcement learning technologies to provide services for users in large sensing areas, such as smart transportation, environment monitoring, etc. In most cases, strategy training for multi-agent reinforcement learning requires substantial interaction with the sensing environment, which results in unaffordable costs. Thus, environment reconstruction via extraction of the causal effect model… Show more

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