首页> 外文期刊>The Journal of Neuroscience: The Official Journal of the Society for Neuroscience >Quantifying generalization from trial-by-trial behavior of adaptive systems that learn with basis functions: theory and experiments in human motor control.
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Quantifying generalization from trial-by-trial behavior of adaptive systems that learn with basis functions: theory and experiments in human motor control.

机译:从具有基本功能的自适应系统的逐次试验行为中量化泛化:人体运动控制中的理论和实验。

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During reaching movements, the brain's internal models map desired limb motion into predicted forces. When the forces in the task change, these models adapt. Adaptation is guided by generalization: errors in one movement influence prediction in other types of movement. If the mapping is accomplished with population coding, combining basis elements that encode different regions of movement space, then generalization can reveal the encoding of the basis elements. We present a theory that relates encoding to generalization using trial-by-trial changes in behavior during adaptation. We consider adaptation during reaching movements in various velocity-dependent force fields and quantify how errors generalize across direction. We find that the measurement of error is critical to the theory. A typical assumption in motor control is that error is the difference between a current trajectory and a desired trajectory (DJ) that does not change during adaptation. Under this assumption, in all force fields that we examined, including one in which force randomly changes from trial to trial, we found a bimodal generalization pattern, perhaps reflecting basis elements that encode direction bimodally. If the DJ was allowed to vary, bimodality was reduced or eliminated, but the generalization function accounted for nearly twice as much variance. We suggest, therefore, that basis elements representing the internal model of dynamics are sensitive to limb velocity with bimodal tuning; however, it is also possible that during adaptation the error metric itself adapts, which affects the implied shape of the basis elements.
机译:在达到运动过程中,大脑的内部模型将所需的肢体运动映射为预测的力。当任务中的力量发生变化时,这些模型就会适应。适应性由一般性指导:一种运动中的错误会影响其他类型运动的预测。如果映射是通过总体编码完成的,将对运动空间的不同区域进行编码的基本元素组合在一起,则泛化可以揭示基本元素的编码。我们提出了一种理论,该理论将编码与使用适应过程中行为的逐次试验变化进行概括有关。我们考虑在各种速度相关的力场中到达运动期间的适应性,并量化误差如何在整个方向上泛化。我们发现误差的测量对理论至关重要。电机控制中的一个典型假设是,误差是当前轨迹与期望轨迹(DJ)之间的差异,该差异在自适应过程中不会发生变化。在这种假设下,在我们研究的所有力场中,包括在试验之间力随机变化的力场中,我们发现了双峰泛化模式,可能反映了双峰编码方向的基本元素。如果允许DJ进行更改,则双峰性会减少或消除,但泛化函数几乎导致了两倍的变化。因此,我们建议,代表动力学内部模型的基本元素对双峰微调对肢体速度敏感。但是,也有可能在适配过程中误差度量本身会适配,这会影响基础元素的隐含形状。

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