High-level representations through unconstrained sensorimotor learning

Ozgur Baran Ozturkcu, Emre Ugur, Erhan Öztop
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引用次数: 3

Abstract

How the sensorimotor experience of an agent can be organized into abstract symbol-like structures to enable effective planning and control is an open question. In the literature, there are many studies that start by assuming the existence of some symbols and ‘ground’ those onto continuous sensorimotor signals. There are also works that aim to facilitate the emergence of symbol-like representations by using specially designed machine learning architectures. In this paper, we investigate whether a deep reinforcement learning system that learns a dynamic task would facilitate the formation of high-level neural representations that might be considered as precursors of symbolic representation, which could be exploited by higher level neural circuits for better control and planning. The results indicate that without even explicit design to promote such representations, neural responses emerge that may serve as the basis of abstract symbol-like representations.
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无约束感觉运动学习的高级表征
如何将智能体的感觉运动经验组织成抽象的类似符号的结构以实现有效的规划和控制是一个悬而未决的问题。在文献中,有许多研究首先假设一些符号的存在,并将这些符号与连续的感觉运动信号“联系”起来。还有一些作品旨在通过使用专门设计的机器学习架构来促进类似符号的表示的出现。在本文中,我们研究了学习动态任务的深度强化学习系统是否会促进高级神经表征的形成,这些表征可能被认为是符号表征的先驱,可以被更高级别的神经回路利用,以更好地控制和规划。结果表明,即使没有明确的设计来促进这种表征,神经反应也可能作为抽象符号表征的基础。
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