A new approach for the design of reinforcement schemes for learning automata: stochastic estimator learning algorithms

G. Papadimitriou
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引用次数: 4

Abstract

A new approach to the design of S-model ergodic learning automata is introduced. The new scheme uses a stochastic estimator and is able to operate in nonstationary environments with high accuracy and high adaptation rate. The estimator is always recently updated and, consequently, is able to be adapted to environmental changes. The performance of the stochastic estimator learning automation (SELA) is superior to that of the previous well-known S-model ergodic schemes. Furthermore, it is proved that SELA is absolutely expedient in every stationary S-model random environment.<>
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一种设计学习自动机强化方案的新方法:随机估计学习算法
介绍了一种设计s型遍历学习自动机的新方法。该方法采用随机估计量,能够在非平稳环境下运行,具有较高的精度和自适应率。估计器总是最近更新的,因此,能够适应环境的变化。随机估计器学习自动化(SELA)的性能优于先前已知的s模型遍历方案。进一步证明了SELA在任何平稳s模型随机环境下都是绝对有利的。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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