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Embodied Synaptic Plasticity With Online Reinforcement Learning

机译:在线强化学习实现的突触可塑性

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摘要

The endeavor to understand the brain involves multiple collaborating research fields. Classically, synaptic plasticity rules derived by theoretical neuroscientists are evaluated in isolation on pattern classification tasks. This contrasts with the biological brain which purpose is to control a body in closed-loop. This paper contributes to bringing the fields of computational neuroscience and robotics closer together by integrating open-source software components from these two fields. The resulting framework allows to evaluate the validity of biologically-plausibe plasticity models in closed-loop robotics environments. We demonstrate this framework to evaluate Synaptic Plasticity with Online REinforcement learning (SPORE), a reward-learning rule based on synaptic sampling, on two visuomotor tasks: reaching and lane following. We show that SPORE is capable of learning to perform policies within the course of simulated hours for both tasks. Provisional parameter explorations indicate that the learning rate and the temperature driving the stochastic processes that govern synaptic learning dynamics need to be regulated for performance improvements to be retained. We conclude by discussing the recent deep reinforcement learning techniques which would be beneficial to increase the functionality of SPORE on visuomotor tasks.
机译:理解大脑的努力涉及多个协作研究领域。经典地,理论神经科学家得出的突触可塑性规则是在模式分类任务上单独评估的。这与生物大脑相反,后者的目的是控制身体的闭环。通过整合来自这两个领域的开源软件组件,本文有助于使计算神经科学和机器人技术领域更加紧密。由此产生的框架允许评估闭环机器人环境中的生物学类塑性模型的有效性。我们演示了此框架,可通过两个强化运动任务来评估具有在线突触采样的奖励学习规则在线增强学习(SPORE)的突触可塑性。我们表明,SPORE能够学习在两个小时的模拟时间内执行策略。临时参数探索表明,需要控制驱动突触学习动态的随机过程的学习速率和温度,以保持性能改善。我们通过讨论最近的深度强化学习技术来总结,这将有助于增加SPORE在视觉运动任务上的功能。

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