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Input minimization: a model of cerebellar learning without climbing fiber error signals.

机译:输入最小化:小脑学习模型,无需攀爬纤维错误信号。

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摘要

The cerebellum is critical for motor learning. Current cerebellar learning models follow the Marr/Albus paradigm, in which climbing fibers provide error signals that shape plastic synapses between parallel fibers and Purkinje cells. However, climbing fibers have slow and largely random discharge, and seem unlikely to provide error signals with resolution sufficient to guide cerebellar learning. Parallel fibers carry error signals and could direct the plasticity of their own synapses, but the error signals are carried along with other signals. This report presents the new input minimization (InMin) model, in which Purkinje cells reduce error by minimizing their overall parallel fiber input. The slowly, randomly firing climbing fiber provides only synchronization pulses. InMin offers an alternative that can unify cerebellar findings.
机译:小脑对于运动学习至关重要。当前的小脑学习模型遵循Marr / Albus范例,在该模型中,攀爬纤维提供了误差信号,这些信号塑造了平行纤维与Purkinje细胞之间的塑性突触。然而,攀爬纤维的放电缓慢且很大程度上是随机的,并且似乎不太可能提供具有足以指导小脑学习的分辨率的误差信号。平行光纤会承载错误信号,并可能指示其自身突触的可塑性,但是错误信号会与其他信号一起传输。本报告介绍了新的输入最小化(InMin)模型,其中Purkinje单元通过最小化其总体并行光纤输入来减少错误。缓慢发射的爬升光纤仅提供同步脉冲。 InMin提供了可以统一小脑发现的替代方案。

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