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首页> 外文期刊>Advances in applied probability >COUNTABLE STATE MARKOV DECISION PROCESSES WITH UNBOUNDED JUMP RATES AND DISCOUNTED COST: OPTIMALITY EQUATION AND APPROXIMATIONS
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COUNTABLE STATE MARKOV DECISION PROCESSES WITH UNBOUNDED JUMP RATES AND DISCOUNTED COST: OPTIMALITY EQUATION AND APPROXIMATIONS

机译:跳率无限制且成本折扣的可数状态马尔可夫决策过程:最优性方程和逼近

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This paper considers Markov decision processes (MDPs) with unbounded rates, as a function of state. We are especially interested in studying structural properties of optimal policies and the value function. A common method to derive such properties is by value iteration applied to the uniformised MDP. However, due to the unboundedness of the rates, uniformisation is not possible, and so value iteration cannot be applied in the way we need. To circumvent this, one can perturb the MDP. Then we need two results for the perturbed sequence of MDPs: 1. there exists a unique solution to the discounted cost optimality equation for each perturbation as well as for the original MDP; 2. if the perturbed sequence of MDPs converges in a suitable manner then the associated optimal policies and the value function should converge as well. We can model both the MDP and perturbed MDPs as a collection of parametrised Markov processes. Then both of the results above are essentially implied by certain continuity properties of the process as a function of the parameter. In this paper we deduce tight verifiable conditions that imply the necessary continuity properties. The most important of these conditions are drift conditions that are strongly related to nonexplosiveness.
机译:本文考虑了具有无限速率的马尔可夫决策过程(MDP),它是状态的函数。我们对研究最优政策和价值函数的结构特性特别感兴趣。推导此类属性的常用方法是通过将值迭代应用于统一的MDP。但是,由于费率的无限性,不可能进行统一化,因此无法按照我们需要的方式应用值迭代。为了避免这种情况,可以干扰MDP。然后,对于MDP的扰动序列,我们需要两个结果:1.对于每个扰动以及原始MDP,存在折现成本最优方程的唯一解; 2.如果MDP的扰动序列以合适的方式收敛,则相关的最优策略和价值函数也应该收敛。我们可以将MDP和受干扰的MDP建模为参数化的马尔可夫过程的集合。然后,上述两个结果基本上都由该过程的某些连续性作为参数的函数来隐含。在本文中,我们推断出严格的可验证条件,这些条件暗示了必要的连续性。这些条件中最重要的是与非爆炸性密切相关的漂移条件。

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