Distinguishing Learning Rules with Brain Machine Interfaces.

Jacob P Portes, Christian Schmid, James M Murray
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引用次数: 0

Abstract

Despite extensive theoretical work on biologically plausible learning rules, clear evidence about whether and how such rules are implemented in the brain has been difficult to obtain. We consider biologically plausible supervised- and reinforcement-learning rules and ask whether changes in network activity during learning can be used to determine which learning rule is being used. Supervised learning requires a credit-assignment model estimating the mapping from neural activity to behavior, and, in a biological organism, this model will inevitably be an imperfect approximation of the ideal mapping, leading to a bias in the direction of the weight updates relative to the true gradient. Reinforcement learning, on the other hand, requires no credit-assignment model and tends to make weight updates following the true gradient direction. We derive a metric to distinguish between learning rules by observing changes in the network activity during learning, given that the mapping from brain to behavior is known by the experimenter. Because brain-machine interface (BMI) experiments allow for precise knowledge of this mapping, we model a cursor-control BMI task using recurrent neural networks, showing that learning rules can be distinguished in simulated experiments using only observations that a neuroscience experimenter would plausibly have access to.

用脑机接口区分学习规则。
尽管对生物学上合理的学习规则进行了大量的理论研究,但关于这些规则是否以及如何在大脑中实施的明确证据一直难以获得。我们考虑生物学上合理的监督和强化学习规则,并询问学习过程中网络活动的变化是否可以用来确定正在使用的学习规则。监督学习需要一个信用分配模型来估计从神经活动到行为的映射,并且,在生物有机体中,该模型将不可避免地是理想映射的不完美近似,导致相对于真实梯度的权重更新方向存在偏差。另一方面,强化学习不需要信用分配模型,并且倾向于按照真实梯度方向进行权重更新。考虑到实验者知道从大脑到行为的映射,我们通过观察学习过程中网络活动的变化推导出一个度量来区分学习规则。由于脑机接口(BMI)实验允许对这种映射进行精确的了解,我们使用递归神经网络模拟了一个光标控制的BMI任务,表明学习规则可以在模拟实验中仅使用神经科学实验者可能获得的观察结果来区分。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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