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Robust reinforcement learning technique with bigeminal representation of continuous state space for multi-robot systems

机译:具有多机器人系统连续状态空间原型的鲁棒强化学习技术

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摘要

We have been developing a reinforcement learning technique called Bayesian-discrimination-function-based reinforcement learning (BRL) as an approach to autonomous specialization, which is a new concept in cooperative multirobot systems. BRL has a mechanism for autonomously segmenting the continuous state and action space. However, as in other machine learning approaches, overfitting is occasionally observed after successful learning. This paper proposes a technique to sophisticatedly utilize messy knowledge acquired using BRL. The proposed technique that has a doubly represented state space by parametric and nonparametric models is expected to show better learning performance and robustness against environmental changes. We investigate the proposed technique by conducting computer simulations of a cooperative transport task.
机译:我们一直在开发一种称为贝叶斯判别函数的基于强化学习的强化学习技术(BRL),作为自主专业化的一种方法,这是协作式多机器人系统中的一个新概念。 BRL具有自动分割连续状态和动作空间的机制。但是,与其他机器学习方法一样,成功学习后偶尔会出现过度拟合。本文提出了一种技术,可以复杂地利用通过BRL获得的凌乱知识。通过参数和非参数模型将状态空间加倍表示的拟议技术有望表现出更好的学习性能和对环境变化的鲁棒性。我们通过进行合作运输任务的计算机模拟研究提出的技术。

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