Recently, remarkable progress has been made by approximating Nash equilibrium (NE), correlated equilibrium (CE), and coarse correlated equilibrium (CCE) through function approximation that trains a neural network to predict equilibria from game representations. Furthermore, equivariant architectures are widely adopted in designing such equilibrium approximators in normal-form games. In this paper, we theoretically characterize benefits and limitations of equivariant equilibrium approximators. For the benefits, we show that they enjoy better generalizability than general ones and can achieve better approximations when the payoff distribution is permutation-invariant. For the limitations, we discuss their drawbacks in terms of equilibrium selection and social welfare. Together, our results help to understand the role of equivariance in equilibrium approximators.
翻译:最近,近似纳什平衡(NE)、相关平衡(CE)和粗正相关平衡(CCE)取得了显著进展,通过功能近似,对神经网络进行了培训,以预测与游戏表达的平衡。此外,在设计正常形式的游戏中这种平衡近似器时,广泛采用了异差结构。在本文中,我们从理论上描述平衡近似器的惠益和局限性。关于这些惠益,我们显示它们比一般的更普遍,而且当收益分配是变异时,可以实现更好的近似。关于这些局限性,我们从均衡选择和社会福利的角度讨论了它们的缺点。我们的成果共同帮助理解平衡近似器中的平衡作用。