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Averaging learning curves across and within participants

机译:跨参与者和参与者内部的平均学习曲线

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We examine recent concerns that averaged learning curves can present a distorted picture of individual learning. Analyses of practice curve data from a range of paradigms demonstrate that such concerns are well founded for fits of power and exponential functions when the arithmetic average is computed over participants. We also demonstrate that geometric averaging over participants does not, in general, avoid distortion. By contrast, we show that block averages of individual curves and similar smoothing techniques cause little or no distortion of functional form, while still providing the noise reduction benefits that motivate the use of averages. Our analyses are concerned mainly with the effects of averaging on the fit of exponential and power functions, but we also define general conditions that must be met by any set of functions to avoid distortion from averaging.
机译:我们研究了最近的担忧,即平均学习曲线可能会呈现个体学习的扭曲图景。对一系列范式的实践曲线数据进行的分析表明,当对参与者计算算术平均值时,对于功率和指数函数的拟合,这种担忧是有充分根据的。我们还证明,对参与者进行几何平均通常不会避免失真。相比之下,我们表明,单个曲线的块平均值和类似的平滑技术不会或几乎不会引起功能形式的失真,同时仍然提供了降低噪声的好处,从而可以激发平均值的使用。我们的分析主要涉及平均对指数函数和幂函数拟合的影响,但我们还定义了任何一组函数都必须满足的一般条件,以避免平均引起的失真。

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