Recent advances in quantum computing and in particular, the introduction of quantum GANs, have led to increased interest in quantum zero-sum game theory, extending the scope of learning algorithms for classical games into the quantum realm. In this paper, we focus on learning in quantum zero-sum games under Matrix Multiplicative Weights Update (a generalization of the multiplicative weights update method) and its continuous analogue, Quantum Replicator Dynamics. When each player selects their state according to quantum replicator dynamics, we show that the system exhibits conservation laws in a quantum-information theoretic sense. Moreover, we show that the system exhibits Poincare recurrence, meaning that almost all orbits return arbitrarily close to their initial conditions infinitely often. Our analysis generalizes previous results in the case of classical games.
翻译:量子计算的最新进展,特别是量子GANs的引入,导致人们对量子零和游戏理论的兴趣增加,将古典游戏的学习算法范围扩大到量子领域。在本文中,我们侧重于在量子倍增 Weights 更新(多倍增重量更新法的概括化)及其连续类比,即量子复制体动力学中学习量子零和游戏。当每个玩家根据量子复制体动态选择其状态时,我们显示系统体现了量子信息理论意义上的保存法。此外,我们展示了系统展示了Poincare重复现象,这意味着几乎所有轨道都无限制地返回到接近其初始条件的地方。我们的分析概括了古典游戏的以往结果。