Parmar Pritesh N, Patton James L
Richard and Loan Hill Department of Bioengineering, University of Illinois at Chicago, Chicago, IL, United States.
Shirley Ryan AbilityLab (formerly the Rehabilitation Institute of Chicago), Chicago, IL, United States.
Front Neurorobot. 2021 Oct 29;15:651214. doi: 10.3389/fnbot.2021.651214. eCollection 2021.
During motor learning, people often practice reaching in variety of movement directions in a randomized sequence. Such training has been shown to enhance retention and transfer capability of the acquired skill compared to the blocked repetition of the same movement direction. The learning system must accommodate such randomized order either by having a memory for each movement direction, or by being able to generalize what was learned in one movement direction to the controls of nearby directions. While our preliminary study used a comprehensive dataset from visuomotor learning experiments and evaluated the first-order model candidates that considered the memory of error and generalization across movement directions, here we expanded our list of candidate models that considered the higher-order effects and error-dependent learning rates. We also employed cross-validation to select the leading models. We found that the first-order model with a constant learning rate was the best at predicting learning curves. This model revealed an interaction between the learning and forgetting processes using the direction-specific memory of error. As expected, learning effects were observed at the practiced movement direction on a given trial. Forgetting effects (error increasing) were observed at the unpracticed movement directions with learning effects from generalization from the practiced movement direction. Our study provides insights that guide optimal training using the machine-learning algorithms in areas such as sports coaching, neurorehabilitation, and human-machine interactions.
在运动学习过程中,人们经常以随机顺序练习向各种运动方向伸手。与相同运动方向的阻塞式重复相比,这种训练已被证明能提高所习得技能的保持和迁移能力。学习系统必须通过对每个运动方向有记忆,或者能够将在一个运动方向上学到的东西推广到附近方向的控制中,来适应这种随机顺序。虽然我们的初步研究使用了来自视觉运动学习实验的综合数据集,并评估了考虑误差记忆和跨运动方向泛化的一阶模型候选者,但在这里我们扩展了考虑高阶效应和误差依赖学习率的候选模型列表。我们还采用交叉验证来选择领先模型。我们发现,具有恒定学习率的一阶模型在预测学习曲线方面表现最佳。该模型利用特定方向的误差记忆揭示了学习和遗忘过程之间的相互作用。正如预期的那样,在给定试验中,在练习的运动方向上观察到学习效应。在未练习的运动方向上,随着从练习的运动方向泛化而来的学习效应,观察到遗忘效应(误差增加)。我们的研究提供了见解,可指导在体育教练、神经康复和人机交互等领域使用机器学习算法进行优化训练。