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Bridge the Gap Between ADMM and Stackelberg Game: Incentive Mechanism Design for Big Data Networks

机译:弥合ADMM与Stackelberg游戏之间的鸿沟:大数据网络的激励机制设计

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摘要

Alternating direction method of multipliers (ADMM) has been well recognized as an efficient optimization approach due to its fast convergence speed and variable decomposition property. However, in big data networks, the agents may not feedback the variables as the centralized controller expects. In this paper, we model the problem as a Stackelberg game and design a Stackelberg game based ADMM to deal with the contradiction between the centralized objective of the controller and the individual objectives from the agents. The Stackelberg game based ADMM can converge linearly, which is not dependent on the number of agents. The case study verifies the fast convergence of our game-based incentive mechanism.
机译:乘法器的交替方向法(ADMM)由于其快速的收敛速度和可变的分解特性而被公认为一种有效的优化方法。但是,在大数据网络中,代理可能不会像集中控制器所期望的那样反馈变量。在本文中,我们将问题建模为Stackelberg博弈,并设计基于ADMM的Stackelberg博弈,以解决控制器的集中目标与代理个体目标之间的矛盾。基于Stackelberg游戏的ADMM可以线性收敛,而不依赖于代理人数。案例研究验证了我们基于游戏的激励机制的快速收敛。

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