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A spiking neuronal model learning a motor control task by reinforcement learning and structural synaptic plasticity

机译:通过加固学习和结构突触可塑性学习电机控制任务的尖峰神经元模型

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In this paper, we present a spiking neuronal model that learns to perform a motor control task. Since the long-term goal of this project is the application of such a neuronal model to study the mutual adaptation between a Brain-Computer Interface (BCI) and its user, neurobiological plausibility of the model is a key aspect. Therefore, the model was trained using reinforcement learning similar to that of the dopamine system, in which a global reward and punishment signal controlled spike-timing dependent plasticity (STDP). Based on this method, the majority of the randomly generated models were able to learn the motor control task. Although the models were only trained on two targets, they were able to reach arbitrary targets after learning. By introducing structural synaptic plasticity (SSP), which dynamically restructures the connections between neurons, the number of models that successfully learned the task could be significantly improved.
机译:在本文中,我们提出了一种尖峰神经元模型,用于执行电机控制任务。由于该项目的长期目标是应用这种神经元模型来研究脑电脑界面(BCI)及其用户之间的互动,模型的神经生物学合理性是一个关键方面。因此,使用类似于多巴胺系统的增强学习训练该模型,其中全球奖励和惩罚信号控制的峰值定时依赖性可塑性(STDP)。基于此方法,大多数随机产生的模型能够学习电机控制任务。虽然模型仅在两个目标上培训,但他们在学习后能够达到任意目标。通过引入结构突触塑性(SSP),它动态重构神经元之间的连接,成功学习了任务的模型数量可以得到显着提高。

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