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首页> 外文期刊>The Journal of Neuroscience: The Official Journal of the Society for Neuroscience >A reward-modulated hebbian learning rule can explain experimentally observed network reorganization in a brain control task.
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A reward-modulated hebbian learning rule can explain experimentally observed network reorganization in a brain control task.

机译:奖励调制的希伯来语学习规则可以解释在大脑控制任务中实验观察到的网络重组。

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It has recently been shown in a brain-computer interface experiment that motor cortical neurons change their tuning properties selectively to compensate for errors induced by displaced decoding parameters. In particular, it was shown that the three-dimensional tuning curves of neurons whose decoding parameters were reassigned changed more than those of neurons whose decoding parameters had not been reassigned. In this article, we propose a simple learning rule that can reproduce this effect. Our learning rule uses Hebbian weight updates driven by a global reward signal and neuronal noise. In contrast to most previously proposed learning rules, this approach does not require extrinsic information to separate noise from signal. The learning rule is able to optimize the performance of a model system within biologically realistic periods of time under high noise levels. Furthermore, when the model parameters are matched to data recorded during the brain-computer interface learning experiments described above, the model produces learning effects strikingly similar to those found in the experiments.
机译:最近在脑机接口实验中显示,运动皮层神经元选择性地改变其调谐特性,以补偿由移位的解码参数引起的错误。特别地,显示了其解码参数被重新分配的神经元的三维调谐曲线比其解码参数未被重新分配的神经元的三维调谐曲线变化更大。在本文中,我们提出了可以重现此效果的简单学习规则。我们的学习规则使用由全局奖励信号和神经元噪声驱动的Hebbian权重更新。与大多数先前提出的学习规则相反,此方法不需要外部信息即可将噪声与信号分离。该学习规则能够在高噪声水平下的生物学现实时间段内优化模型系统的性能。此外,当模型参数与上述脑机接口学习实验期间记录的数据匹配时,该模型产生的学习效果与实验中发现的效果非常相似。

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