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Scalable techniques from nonparametric statistics for real time robot learning

机译:来自非参数统计的可扩展技术,用于实时机器人学习

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摘要

Locally weighted learning (LWL) is a class of techniques from nonparametric statistics that provides useful representations and training algorithms for learning about complex phenomena during autonomous adaptive control of robotic systems. This paper introduces several LWL algorithms that have been tested successfully in real-time learning of complex robot tasks. We discuss two major classes of LWL, memory-based LWL and purely incremental LWL that does not need to remember any data explicitly. In contrast to the traditional belief that LWL methods cannot work well in high-dimensional spaces, we provide new algorithms that have been tested on up to 90 dimensional learning problems. The applicability of our LWL algorithms is demonstrated in various robot learning examples, including the learning of devil-sticking, pole-balancing by a humanoid robot arm, and inverse-dynamics learning for a seven and a 30 degree-of-freedom robot. In all these examples, the application of our statistical neural networks techniques allowed either faster or more accurate acquisition of motor control than classical control engineering. [References: 31]
机译:局部加权学习(LWL)是非参数统计中的一类技术,它提供了有用的表示形式和训练算法,用于在机器人系统的自适应控制中学习复杂现象。本文介绍了几种LWL算法,这些算法已在复杂机器人任务的实时学习中成功进行了测试。我们讨论了LWL的两大类,即基于内存的LWL和不需要显式记住任何数据的纯增量LWL。与传统的认为LWL方法无法在高维空间中很好地工作的信念相反,我们提供了已针对多达90个维学习问题进行了测试的新算法。我们的LWL算法的适用性在各种机器人学习示例中得到了证明,包括魔鬼般的学习,人形机器人手臂的极点平衡以及7和30自由度机器人的逆动力学学习。在所有这些示例中,我们的统计神经网络技术的应用使电机控制的获取比经典控制工程更快或更准确。 [参考:31]

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