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首页> 外文期刊>Biological Cybernetics >Using input minimization to train a cerebellar model to simulate regulation of smooth pursuit
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Using input minimization to train a cerebellar model to simulate regulation of smooth pursuit

机译:使用输入最小化训练小脑模型来模拟平稳追随的调节

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摘要

Cerebellar learning appears to be driven by motor error, but whether or not error signals are provided by climbing fibers (CFs) remains a matter of controversy. Here we show that a model of the cerebellum can be trained to simulate the regulation of smooth pursuit eye movements by minimizing its inputs from parallel fibers (PFs), which carry various signals including error and efference copy. The CF spikes act as “learn now” signals. The model can be trained to simulate the regulation of smooth pursuit of visual objects following circular or complex trajectories and provides insight into how Purkinje cells might encode pursuit parameters. In minimizing both error and efference copy, the model demonstrates how cerebellar learning through PF input minimization (InMin) can make movements more accurate and more efficient. An experimental test is derived that would distinguish InMin from other models of cerebellar learning which assume that CFs carry error signals.
机译:小脑学习似乎是由运动错误引起的,但是是否由攀爬纤维(CF)提供错误信号仍然是一个有争议的问题。在这里,我们表明,可以通过最小化来自平行纤维(PF)的输入来训练小脑模型,以模拟平滑追随眼睛运动的调节,平行纤维(PF)携带各种信号,包括误差和依法复制。 CF尖峰充当“立即学习”信号。可以训练该模型来模拟遵循圆形或复杂轨迹的视觉对象平滑跟踪的规则,并提供有关Purkinje细胞如何编码跟踪参数的见解。在最小化错误和引用复制的同时,该模型演示了通过PF输入最小化(InMin)的小脑学习如何使运动更准确,更有效。得出了一个实验测试,该测试将InMin与假定CF携带错误信号的其他小脑学习模型区分开。

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