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Influence of the Chaotic Property on Reinforcement Learning Using a Chaotic Neural Network

机译:混沌财产对利用混沌神经网络钢筋学习的影响

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Aiming for the emergence of higher complicated dynamic function such as "thinking", our group has set up a hypothesis that internal chaotic dynamics in an agent's chaotic neural network grows from "exploration" to "thinking" through reinforcement learning, and proposed a new learning method for that. However, even after learning in a simple obstacle avoidance task, the agent sometimes moved irregularly and collided with the obstacle. By reducing the scale of the recurrent connection weights, which is expected to have a deep relation to the chaotic property, the problem was reduced. Then in this paper, the learning performance depending on the recurrent weight scale is observed. The scale has an appropriate value as can be seen in FORCE learning in reservoir computing.
机译:旨在旨在出现更高的复杂动态功能,如“思考”,我们的团队已经建立了一个假设,即通过加强学习的“探索”到“探索”,并提出了新的学习,从“探索”中的内部混乱动态进行了一个假设。方法。然而,即使在学习简单的障碍物避免任务之后,代理有时也会不规则地移动并与障碍物相撞。通过减少经常性连接重量的规模,预计与混沌属性具有深远的关系,问题减少了。然后,在本文中,观察到根据复发重量比例的学习性能。规模具有适当的值,可以在储层计算中生效。

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