Semi Bandit Dynamics in Congestion Games: Convergence to Nash Equilibrium and No-Regret Guarantees

Ioannis Panageas, Stratis Skoulakis, Luca Viano, Xiao Wang, V. Cevher
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引用次数: 1

Abstract

In this work, we introduce a new variant of online gradient descent, which provably converges to Nash Equilibria and simultaneously attains sublinear regret for the class of congestion games in the semi-bandit feedback setting. Our proposed method admits convergence rates depending only polynomially on the number of players and the number of facilities, but not on the size of the action set, which can be exponentially large in terms of the number of facilities. Moreover, the running time of our method has polynomial-time dependence on the implicit description of the game. As a result, our work answers an open question from (Du et. al, 2022).
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拥塞博弈中的半强盗动力学:收敛到纳什均衡和无遗憾保证
在本文中,我们引入了一种新的在线梯度下降的变体,证明了它收敛于纳什均衡,同时在半强盗反馈设置下实现了一类拥堵博弈的次线性遗憾。我们提出的方法允许收敛速度仅多项式地取决于参与者的数量和设施的数量,但不取决于行动集的大小,就设施的数量而言,行动集可以呈指数级增长。此外,该方法的运行时间与博弈的隐式描述具有多项式时间依赖性。因此,我们的工作回答了(Du et. al, 2022)的一个开放性问题。
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