计算机科学
桥接(联网)
拍卖算法
移动边缘计算
激励
依赖关系(UML)
组合拍卖
移动计算
分布式计算
双重拍卖
边缘计算
移动电话技术
GSM演进的增强数据速率
理论计算机科学
服务器
计算机网络
移动无线电
拍卖理论
共同价值拍卖
人工智能
收入等值
微观经济学
经济
作者
Hong Kang,Minghao Li,Lehao Lin,Sizheng Fan,Wei Cai
标识
DOI:10.1109/tmc.2024.3407958
摘要
As mobile applications grow increasingly computation-intensive, the challenges arising from the limitations of mobile devices in terms of computing resources and battery life become more pronounced. Mobile Edge Computing (MEC) provides a promising avenue to address these challenges and enhance user experience. While existing studies have extensively explored resource allocation and task scheduling in MEC, most treat tasks as monolithic entities, overlooking the nuanced subtasks/components that often make up mobile applications. This paper endeavors to bridge the gap between the need for incentive mechanisms and the offloading of dependent computation tasks in MEC. Drawing inspiration from auction theory, we introduce a novel Multi-stage Iterative Combinatorial Double Auction (MICDA) mechanism, specifically tailored for dependent tasks in a cloud-edge-end cooperative computing scenario. Through theoretical analysis, the MICDA mechanisms demonstrate truthfulness, individual rationality, budget balance, and computational efficiency. Comprehensive experiment results further confirm its superior performance in improving application makespan and social welfare compared to other existing offloading strategies. This work validates the effective integration of dependency-aware computation offloading and auction mechanisms in overcoming economic and computational challenges in MEC systems, thereby paving the way for their potential application in broader real-world scenarios.
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