Ahn Jooeun, Zhang Zhaoran, Sternad Dagmar
Department of Mechanical Engineering, University of Victoria, Victoria, British Columbia, Canada.
Department of Bioengineering, Northeastern University, Boston, Massachusetts, United States of America.
PLoS One. 2016 Jul 27;11(7):e0158466. doi: 10.1371/journal.pone.0158466. eCollection 2016.
The detection of an error in the motor output and the correction in the next movement are critical components of any form of motor learning. Accordingly, a variety of iterative learning models have assumed that a fraction of the error is adjusted in the next trial. This critical fraction, the correction gain, learning rate, or feedback gain, has been frequently estimated via least-square regression of the obtained data set. Such data contain not only the inevitable noise from motor execution, but also noise from measurement. It is generally assumed that this noise averages out with large data sets and does not affect the parameter estimation. This study demonstrates that this is not the case and that in the presence of noise the conventional estimate of the correction gain has a significant bias, even with the simplest model. Furthermore, this bias does not decrease with increasing length of the data set. This study reveals this limitation of current system identification methods and proposes a new method that overcomes this limitation. We derive an analytical form of the bias from a simple regression method (Yule-Walker) and develop an improved identification method. This bias is discussed as one of other examples for how the dynamics of noise can introduce significant distortions in data analysis.
检测运动输出中的误差并在下次运动中进行校正,是任何形式的运动学习的关键组成部分。因此,各种迭代学习模型都假定在下一次试验中会对一部分误差进行调整。这个关键比例,即校正增益、学习率或反馈增益,通常是通过对所得数据集进行最小二乘回归来估计的。此类数据不仅包含运动执行过程中不可避免的噪声,还包含测量噪声。一般认为,随着数据集规模增大,这种噪声会相互抵消,不会影响参数估计。本研究表明情况并非如此,即便在最简单的模型中,存在噪声时校正增益的传统估计也会有显著偏差。此外,这种偏差不会随着数据集长度的增加而减小。本研究揭示了当前系统识别方法的这一局限性,并提出了一种克服该局限性的新方法。我们从一种简单的回归方法(尤尔 - 沃克法)推导出偏差的解析形式,并开发了一种改进的识别方法。这种偏差被视为噪声动态特性如何在数据分析中引入重大失真的其他示例之一进行讨论。