Biomimetic approach to tacit learning based on compound control.

Shingo Shimoda, Hidenori Kimura
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引用次数: 34

Abstract

The remarkable capability of living organisms to adapt to unknown environments is due to learning mechanisms that are totally different from the current artificial machine-learning paradigm. Computational media composed of identical elements that have simple activity rules play a major role in biological control, such as the activities of neurons in brains and the molecular interactions in intracellular control. As a result of integrations of the individual activities of the computational media, new behavioral patterns emerge to adapt to changing environments. We previously implemented this feature of biological controls in a form of machine learning and succeeded to realize bipedal walking without the robot model or trajectory planning. Despite the success of bipedal walking, it was a puzzle as to why the individual activities of the computational media could achieve the global behavior. In this paper, we answer this question by taking a statistical approach that connects the individual activities of computational media to global network behaviors. We show that the individual activities can generate optimized behaviors from a particular global viewpoint, i.e., autonomous rhythm generation and learning of balanced postures, without using global performance indices.

基于复合控制的仿生默会学习方法。
生物体适应未知环境的卓越能力是由于与当前人工机器学习范式完全不同的学习机制。由具有简单活动规则的相同元素组成的计算介质在生物控制中发挥重要作用,例如大脑神经元的活动和细胞内控制中的分子相互作用。由于计算媒体的个人活动的整合,新的行为模式出现,以适应不断变化的环境。我们之前以一种机器学习的形式实现了生物控制的这一特征,并成功地实现了无需机器人模型或轨迹规划的双足行走。尽管双足行走取得了成功,但为什么计算媒体的个体活动可以实现全局行为,这是一个谜。在本文中,我们通过将计算媒体的个体活动与全球网络行为联系起来的统计方法来回答这个问题。我们表明,个体活动可以从特定的全局视角产生优化行为,即自主节奏生成和平衡姿势的学习,而无需使用全局性能指标。
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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