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Mixed risk-neutral/minimax control of discrete-time, finite-state Markov decision processes

机译:离散时间有限状态马尔可夫决策过程的混合风险中性/最小极大控制

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摘要

Addresses the control design problem for discrete-time, finite-state Markov decision processes, when both risk-neutral and minimax objectives are of interest. We introduce the mixed risk-neutral/minimax objective and utilize results from risk-neutral and minimax control to derive an information state process and dynamic programming equations for the value function. We synthesize optimal control laws both on the finite and the infinite horizons. We study the effectiveness of both the mixed risk-neutral/minimax family and the risk-sensitive family of controllers as tools to tradeoff risk-neutral and minimax objectives. We conclude that the mixed risk-neutral/minimax family is more effective, at the cost of increased controller complexity.
机译:当风险中性目标和最小极大目标都受到关注时,解决离散时间有限状态马尔可夫决策过程的控制设计问题。我们引入混合风险中性/最小极大值目标,并利用风险中性和最小极大值控制的结果来推导信息状态过程和价值函数的动态规划方程。我们在有限和无限范围内综合了最优控制律。我们研究了混合风险中性/极小极大家族和风险敏感控制器家族作为权衡风险中性和极小极大目标的工具的有效性。我们得出的结论是,风险中性/最小风险混合型家庭更为有效,但增加了控制器的复杂性。

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