学习自动机的非线性强化方案

H. E. Garcia, Abhik Ray
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引用次数: 9

摘要

介绍了两种新的学习自动机非线性强化方案的发展和评价。这些方案旨在提高现有L/sub R-P/方案在与非平稳环境相互作用时的适应性。这两种格式中的第一种称为包含历史的非线性格式(NSIH),第二种称为带不稳定区的非线性格式(NSWUZ)。这些算法的主要目标是减少动作概率向量达到所需精度水平所需的迭代次数,而不是收敛到笛卡尔坐标中的特定单位向量。通过仿真实验对NSIH和NSWUZ在非平稳环境下的学习性能进行了评估。仿真结果表明,所提出的非线性算法对环境变化的响应速度比L/sub R-P/方案快。
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Nonlinear reinforcement schemes for learning automata
The development and evaluation of two novel nonlinear reinforcement schemes for learning automata are presented. These schemes are designed to increase the rate of adaptation of the existing L/sub R-P/ schemes while interacting with nonstationary environments. The first of these two schemes is called a nonlinear scheme incorporating history (NSIH) and the second a nonlinear scheme with unstable zones (NSWUZ). The prime objective of these algorithms is to reduce the number of iterations needed for the action probability vector to reach the desired level of accuracy rather than converge to a specific unit vector in the Cartesian coordinate. Simulation experiments have been conducted to assess the learning properties of NSIH and NSWUZ in nonstationary environments. The simulation results show that the proposed nonlinear algorithms respond to environmental changes faster than the L/sub R-P/ scheme.<>
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