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首页> 外文期刊>Frontiers in Computational Neuroscience >Context-dependent memory decay is evidence of effort minimization in motor learning: a computational study
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Context-dependent memory decay is evidence of effort minimization in motor learning: a computational study

机译:上下文相关的记忆衰退是运动学习中努力最小化的证据:一项计算研究

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Recent theoretical models suggest that motor learning includes at least two processes: error minimization and memory decay. While learning a novel movement, a motor memory of the movement is gradually formed to minimize the movement error between the desired and actual movements in each training trial, but the memory is slightly forgotten in each trial. The learning effects of error minimization trained with a certain movement are partially available in other non-trained movements, and this transfer of the learning effect can be reproduced by certain theoretical frameworks. Although most theoretical frameworks have assumed that a motor memory trained with a certain movement decays at the same speed during performing the trained movement as non-trained movements, a recent study reported that the motor memory decays faster during performing the trained movement than non-trained movements, i.e., the decay rate of motor memory is movement or context dependent. Although motor learning has been successfully modeled based on an optimization framework, e.g., movement error minimization, the type of optimization that can lead to context-dependent memory decay is unclear. Thus, context-dependent memory decay raises the question of what is optimized in motor learning. To reproduce context-dependent memory decay, I extend a motor primitive framework. Specifically, I introduce motor effort optimization into the framework because some previous studies have reported the existence of effort optimization in motor learning processes and no conventional motor primitive model has yet considered the optimization. Here, I analytically and numerically revealed that context-dependent decay is a result of motor effort optimization. My analyses suggest that context-dependent decay is not merely memory decay but is evidence of motor effort optimization in motor learning.
机译:最近的理论模型表明,运动学习至少包括两个过程:误差最小化和记忆衰退。在学习新颖的动作时,会逐渐形成动作的运动记忆,以最大程度地减少每次训练试验中所需动作与实际动作之间的动作误差,但是在每次试验中都会略微忘记记忆。通过某种运动训练的最小化错误的学习效果在其他非训练运动中部分可用,并且这种学习效果的传递可以通过某些理论框架来再现。尽管大多数理论框架都假定,以某种运动训练的运动记忆在执行训练运动期间的衰减与未训练运动的衰减速度相同,但最近的一项研究报告说,在执行训练运动期间,运动记忆的衰减比未训练的运动更快运动,即运动记忆的衰减率取决于运动或环境。尽管已经基于优化框架(例如,运动误差最小化)成功地对运动学习进行了建模,但是尚不清楚可以导致与上下文有关的存储器衰减的优化类型。因此,上下文相关的记忆衰减提出了在运动学习中优化的问题。为了重现上下文相关的内存衰减,我扩展了一个马达基本框架。具体来说,我将运动努力优化引入框架中,因为一些先前的研究已经报告了运动学习过程中存在努力优化的存在,并且还没有传统的运动原始模型考虑该优化。在这里,我通过分析和数值分析揭示了上下文相关的衰减是运动努力优化的结果。我的分析表明,上下文相关的衰变不仅是记忆衰退,而且是运动学习中运动努力优化的证据。

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