强化学习
计算机科学
资源配置
架空(工程)
趋同(经济学)
还原(数学)
纳什均衡
分布式计算
计算
竞赛(生物学)
资源管理(计算)
自主代理人
一般化
数学优化
人工智能
计算机网络
算法
生物
经济增长
数学
操作系统
生态学
数学分析
经济
几何学
作者
Tan, Jing,Ramin Khalili,Holger Karl,Artur Hecker
标识
DOI:10.1109/infocom48880.2022.9796717
摘要
We formulate computation offloading as a decentralized decision-making problem with autonomous agents. We design an interaction mechanism that incentivizes agents to align private and system goals by balancing between competition and cooperation. The mechanism provably has Nash equilibria with optimal resource allocation in the static case. For a dynamic environment, we propose a novel multi-agent online learning algorithm that learns with partial, delayed and noisy state information, and a reward signal that reduces information need to a great extent. Empirical results confirm that through learning, agents significantly improve both system and individual performance, e.g., 40% offloading failure rate reduction, 32% communication overhead reduction, up to 38% computation resource savings in low contention, 18% utilization increase with reduced load variation in high contention, and improvement in fairness. Results also confirm the algorithm's good convergence and generalization property in significantly different environments.
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