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本文引用的文献

1
Visuo-proprioceptive interactions during adaptation of the human reach.人类伸手适应过程中的视本体感觉相互作用。
J Neurophysiol. 2014 Feb;111(4):868-87. doi: 10.1152/jn.00314.2012. Epub 2013 Nov 20.
2
Use it and improve it or lose it: interactions between arm function and use in humans post-stroke.用进废退:脑卒中后人类手臂功能和使用之间的相互作用。
PLoS Comput Biol. 2012 Feb;8(2):e1002343. doi: 10.1371/journal.pcbi.1002343. Epub 2012 Feb 16.
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Learning, retention, and slacking: a model of the dynamics of recovery in robot therapy.学习、保持和懈怠:机器人治疗中恢复动态的模型。
IEEE Trans Neural Syst Rehabil Eng. 2012 May;20(3):286-96. doi: 10.1109/TNSRE.2012.2190827. Epub 2012 Apr 16.
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Distinct motor plans form and retrieve distinct motor memories for physically identical movements.不同的运动计划为物理上相同的运动形成和提取不同的运动记忆。
Curr Biol. 2012 Mar 6;22(5):432-6. doi: 10.1016/j.cub.2012.01.042. Epub 2012 Feb 8.
5
Generalization and multirate models of motor adaptation.运动适应的泛化和多速率模型。
Neural Comput. 2012 Apr;24(4):939-66. doi: 10.1162/NECO_a_00262. Epub 2012 Feb 1.
6
Mechanisms of the contextual interference effect in individuals poststroke.脑卒中个体中情境干扰效应的作用机制。
J Neurophysiol. 2011 Nov;106(5):2632-41. doi: 10.1152/jn.00399.2011. Epub 2011 Aug 10.
7
Dual adaptation supports a parallel architecture of motor memory.双重适应支持运动记忆的并行架构。
J Neurosci. 2009 Aug 19;29(33):10396-404. doi: 10.1523/JNEUROSCI.1294-09.2009.
8
Consolidation patterns of human motor memory.人类运动记忆的巩固模式。
J Neurosci. 2008 Sep 24;28(39):9610-8. doi: 10.1523/JNEUROSCI.3071-08.2008.
9
Long-term retention explained by a model of short-term learning in the adaptive control of reaching.通过短期学习模型解释在伸手自适应控制中的长期记忆。
J Neurophysiol. 2008 Nov;100(5):2948-55. doi: 10.1152/jn.90706.2008. Epub 2008 Sep 10.
10
Performance-based adaptive schedules enhance motor learning.基于表现的适应性训练计划可增强运动学习。
J Mot Behav. 2008 Jul;40(4):273-80. doi: 10.3200/JMBR.40.4.273-280.

多任务运动学习中的最优时间表

Optimal Schedules in Multitask Motor Learning.

作者信息

Lee Jeong Yoon, Oh Youngmin, Kim Sung Shin, Scheidt Robert A, Schweighofer Nicolas

机构信息

Computer Science, University of Southern California, Los Angeles, CA 90089, U.S.A.

Neuroscience Graduate Program, University of Southern California, Los Angeles, CA 90089, U.S.A.

出版信息

Neural Comput. 2016 Apr;28(4):667-85. doi: 10.1162/NECO_a_00823. Epub 2016 Feb 18.

DOI:10.1162/NECO_a_00823
PMID:26890347
原文链接:https://pmc.ncbi.nlm.nih.gov/articles/PMC6555556/
Abstract

Although scheduling multiple tasks in motor learning to maximize long-term retention of performance is of great practical importance in sports training and motor rehabilitation after brain injury, it is unclear how to do so. We propose here a novel theoretical approach that uses optimal control theory and computational models of motor adaptation to determine schedules that maximize long-term retention predictively. Using Pontryagin's maximum principle, we derived a control law that determines the trial-by-trial task choice that maximizes overall delayed retention for all tasks, as predicted by the state-space model. Simulations of a single session of adaptation with two tasks show that when task interference is high, there exists a threshold in relative task difficulty below which the alternating schedule is optimal. Only for large differences in task difficulties do optimal schedules assign more trials to the harder task. However, over the parameter range tested, alternating schedules yield long-term retention performance that is only slightly inferior to performance given by the true optimal schedules. Our results thus predict that in a large number of learning situations wherein tasks interfere, intermixing tasks with an equal number of trials is an effective strategy in enhancing long-term retention.

摘要

尽管在运动学习中安排多个任务以最大限度地长期保持运动表现,在体育训练和脑损伤后的运动康复中具有重要的实际意义,但目前尚不清楚如何做到这一点。我们在此提出一种新颖的理论方法,该方法使用最优控制理论和运动适应计算模型来预测性地确定能使长期保持最大化的训练计划。利用庞特里亚金极大值原理,我们推导出一种控制法则,该法则能确定逐次试验的任务选择,从而如状态空间模型所预测的那样,使所有任务的总体延迟保持最大化。对两个任务的单次适应训练进行模拟表明,当任务干扰较高时,相对任务难度存在一个阈值,低于该阈值时交替训练计划是最优的。只有当任务难度差异较大时,最优训练计划才会给较难的任务分配更多试验次数。然而,在所测试的参数范围内,交替训练计划产生的长期保持表现仅略逊于真正最优训练计划所给出的表现。因此,我们的结果预测,在大量任务相互干扰的学习情境中,将任务以相等次数混合是提高长期保持的有效策略。