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首页> 外文期刊>Frontiers in Psychology >Application of Machine Learning Models for Tracking Participant Skills in Cognitive Training
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Application of Machine Learning Models for Tracking Participant Skills in Cognitive Training

机译:机器学习模型在追踪认知培训的参与者技能中的应用

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A key need in cognitive training interventions is to personalize task difficulty to each user and to adapt this difficulty to continually apply appropriate challenges as users improve their skill to perform the tasks. Here we examine how Bayesian filtering approaches, such as hidden Markov models and Kalman filters, and deep-learning approaches, such as the long short-term memory (LSTM) model, may be useful methods to estimate user skill level and predict appropriate task challenges. A possible advantage of these models over commonly used adaptive methods, such as staircases or blockwise adjustment methods that are based only upon recent performance, is that Bayesian filtering and deep learning approaches can model the trajectory of user performance across multiple sessions and incorporate data from multiple users to optimize local estimates. As a proof of concept, we fit data from two large cohorts of undergraduate students performing WM training using an N-back task. Results show that all three models predict appropriate challenges for different users. However, the hidden Markov models were most accurate in predicting participants' performances as a function of provided challenges, and thus, they placed participants at appropriate future challenges. These data provide good support for the potential of machine learning approaches as appropriate methods to personalize task performance to users in tasks that require adaptively determined challenges.
机译:认知培训干预中的一个关键需求是为每个用户个性化任务难度,并根据用户提高他们执行任务的技能,使这种难以保持适当的挑战。在这里,我们检查贝叶斯滤波方法如何如何,如隐藏的马尔可夫模型和卡尔曼过滤器以及长期内存(LSTM)模型,如长短期内存(LSTM)模型,可能是估计用户技能级别并预测适当的任务挑战的有用方法。这些模型的可能优势在常用的自适应方法上,例如仅基于最近的性能的楼梯或块状调整方法,是贝叶斯滤波和深度学习方法可以在多个会话中模拟用户性能的轨迹,并将数据包含来自多个用户可以优化本地估算。作为概念证明,我们使用N-WALL任务将来自两名大型本科生培训的大型群组的数据拟合。结果表明,所有三种模型都预测了不同用户的适当挑战。然而,隐藏的马尔可夫模型最准确地预测参与者的表现,因为这一挑战的职能,因此,他们将参与者放在适当的未来挑战中。这些数据为机器学习方法的潜力提供了良好的支持,作为适当的方法,以便在需要自适应地确定挑战的任务中为用户个性化任务性能。

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