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Machine Learning to Estimate the Amount of Training to Learn a Motor Skill

机译:机器学习来估计学习运动技能的训练量

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摘要

Machine Learning (ML) has been widely and successfully employed in different fields to estimate information from datasets. However, the necessary time to learn a motor task or to rehabilitate is mainly determined by the professional experience of medical doctor, physiotherapist and so on. Thus, this work introduces a software to measure the performance of subjects on a experiment performing a tracing task, which requires motor learning, and uses ML algorithms on the dataset acquired during this experiment. The task is divided into 1 session that has 3 blocks and each block is composed of 10 trials whereas each trial is one word. Furthermore, ML algorithms - namely k-nearest neighbours, decision tree, support vector machines and multilayer-perceptron neural network - are applied on the collected data from the experiment to estimate which block the subject currently is. The results demonstrated that there was motor learning, as well as that is possible to apply classification models to predict the block of the subject with decision tree achieving statistically significant (p-value < 0.01) best predictions. The proposed approach may be useful for health professionals when estimating the amount of training a patient requires to learn a motor task or rehabilitate.
机译:机器学习(ML)已在不同领域得到广泛成功的采用,以从数据集中估计信息。但是,学习运动任务或康复的必要时间主要取决于医生,物理治疗师等的专业经验。因此,这项工作引入了一种软件,该软件可以在执行跟踪任务的实验中测量受试者的表现,这需要运动学习,并且可以在该实验中获取的数据集上使用ML算法。该任务分为1个会话,每个会话包含3个块,每个块由10个试验组成,而每个试验为一个单词。此外,将ML算法(即k最近邻,决策树,支持向量机和多层感知器神经网络)应用于从实验中收集的数据,以估计对象当前处于哪个区块。结果表明存在运动学习,并且有可能应用分类模型来预测具有决策树的统计学意义(p值<0.01)的最佳预测的受试者。当估计患者学习运动任务或康复所需的训练量时,建议的方法可能对健康专业人员有用。

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