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Perceptual control models of pursuit manual tracking demonstrate individual specificity and parameter consistency

机译:感知控制模型的追踪手动跟踪展示了个性特异性和参数一致性

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Computational models that simulate individuals' movements in pursuit-tracking tasks have been used to elucidate mechanisms of human motor control. Whilst there is evidence that individuals demonstrate idiosyncratic control-tracking strategies, it remains unclear whether models can be sensitive to these idiosyncrasies. Perceptual control theory (PCT) provides a unique model architecture with an internally set reference value parameter, and can be optimized to fit an individual's tracking behavior. The current study investigated whether PCT models could show temporal stability and individual specificity over time. Twenty adults completed three blocks of 15 1-min, pursuit-tracking trials. Two blocks (training and post-training) were completed in one session and the third was completed after 1 week (follow-up). The target moved in a one-dimensional, pseudorandom pattern. PCT models were optimized to the training data using a least-mean-squares algorithm, and validated with data from post-training and follow-up. We found significant inter-individual variability (partial eta(2): .464-.697) and intra-individual consistency (Cronbach's alpha: .880-.976) in parameter estimates. Polynomial regression revealed that all model parameters, including the reference value parameter, contribute to simulation accuracy. Participants' tracking performances were significantly more accurately simulated by models developed from their own tracking data than by models developed from other participants' data. We conclude that PCT models can be optimized to simulate the performance of an individual and that the test-retest reliability of individual models is a necessary criterion for evaluating computational models of human performance.
机译:模拟追踪跟踪任务中的个人运动的计算模型已被用于阐明人机控制的机制。虽然有证据表明,个人展示了特殊的控制跟踪策略,但它仍然尚不清楚模型是否对这些特质敏感。感知控制理论(PCT)提供了一个具有内部设置参考值参数的唯一模型架构,并且可以优化以适合个人的跟踪行为。目前的研究调查了PCT模型是否可以随时间显示时间稳定性和个体特异性。二十名成年人完成了三个块15分钟,追踪跟踪试验。两个会议完成了两个街区(培训和培训),第三个是在1周后完成的(随访)。目标以一维的伪随机模式移动。 PCT模型使用最小均值方向算法针对培训数据进行了优化,并验证了从训练后和后续行动的数据。我们发现了显着的间间可变性(部分ETA(2):.464-.697)和个人估计中的个人一致性(Cronbach的Alpha:.880-.976)。多项式回归揭示了所有模型参数,包括参考值参数,有助于模拟精度。通过由自己的跟踪数据开发的模型比通过从其他参与者数据开发的模型更准确地模拟参与者的跟踪性能。我们得出结论,可以优化PCT模型以模拟个体的性能,并且各个模型的测试保持性可靠性是评估人类性能计算模型的必要标准。

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