The following publications are possibly variants of this publication:
- Dynamic Pricing for Smart Mobile Edge Computing: A Reinforcement Learning ApproachShiyu Chen, Lingxiang Li, Zhi Chen 0002, Shaoqian Li. wcl, 10(4):700-704, 2021. [doi]
- PriDPM: Privacy-preserving dynamic pricing mechanism for robust crowdsensingYuxian Liu, Fagui Liu, Hao-Tian Wu, Xinglin Zhang, Bowen Zhao, Xingfu Yan. cn, 183:107582, 2020. [doi]
- Privacy-Aware Task Allocation Based on Deep Reinforcement Learning for Mobile CrowdsensingMingchuan Yang, Jinghua Zhu, Heran Xi, Yue Yang. wasa 2022: 191-201 [doi]
- Dynamic User Recruitment with Truthful Pricing for Mobile CrowdSensingWenbin Liu, Yongjian Yang, En Wang, Jie Wu. infocom 2020: 1113-1122 [doi]