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Function Optimization via a Continuous Action-Set Reinforcement Learning Automata Model

机译:通过连续的动作集强化学习自动机模型进行功能优化

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Learning automata as a tool for machine learning, could search the optimal state adaptively in random environment. Function optimization is a fundamental issue and many practical models are ultimately the mathematical optimization problems. In this paper, we apply the basic continuous action-set reinforcement learning automata (CARLA) model to function optimization. An application model called equiCARLA is constructed by means of equidistant discretization and linear interpolation, and it presents a superiority over the existing algorithms not only in speed but also in precision. The experimental results demonstrate the effectiveness and efficiency of our model for function optimization.
机译:学习自动机作为机器学习的工具,可以在随机环境中自适应地搜索最佳状态。函数优化是一个基本问题,许多实际模型最终都是数学优化问题。在本文中,我们将基本的连续动作集强化学习自动机(CARLA)模型应用于功能优化。通过等距离散化和线性插值法构造了一个称为EquiCARLA的应用模型,它不仅在速度上而且在精度上都比现有算法优越。实验结果证明了我们的函数优化模型的有效性和效率。

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