**4.4 Others**

The application of Lyapunov optimization-based dynamic control algorithm for dynamic reinforcement learning policy design is illustrated in [11]. In addition, the adaptive control algorithms using the Lyapunov optimization framework in stock market pricing and smart grid are introduced in [12, 13].

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