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Stochastic Constraint Programming by Neuroevolution with Filtering

机译:带有滤波的神经进化随机约束规划

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摘要

Stochastic Constraint Programming is an extension of Constraint Programming for modelling and solving combinatorial problems involving uncertainty. A solution to such a problem is a policy tree that specifies decision variable assignments in each scenario. Several complete solution methods have been proposed, but the authors recently showed that an incomplete approach based on neuroevolution is more scalable. In this paper we hybridise neuroevolution with constraint filtering on hard constraints, and show both theoretically and empirically that the hybrid can learn more complex policies more quickly.
机译:随机约束规划是约束规划的扩展,用于建模和解决涉及不确定性的组合问题。解决此问题的方法是在每个方案中指定决策变量分配的策略树。已经提出了几种完整的解决方法,但是最近作者表明,基于神经进化的不完全方法更具可扩展性。在本文中,我们将神经进化与硬约束上的约束过滤混合在一起,并在理论上和经验上都表明,混合可以更快地学习更复杂的策略。

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