Testing curvatures of learning functions on individual trial and block average data.

Denis Cousineau, Sébastien Hélie, Christine Lefebvre
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引用次数: 17

Abstract

Many models offer different explanations of learning processes, some of them predicting equal learning rates between conditions. The simplest method by which to assess this equality is to evaluate the curvature parameter for each condition, followed by a statistical test. However, this approach is highly dependent on the fitting procedure, which may come with built-in biases difficult to identify. Averaging the data per block of training would help reduce the noise present in the trial data, but averaging introduces a severe distortion on the curve, which can no longer be fitted by the original function. In this article, we first demonstrate what is the distortion resulting from block averaging. The block average learning function, once known, can be used to extract parameters when the performance is averaged over blocks or sessions. The use of averages eliminates an important part of the noise present in the data and allows good recovery of the learning curve parameters. Equality of curvatures can be tested with a test of linear hypothesis. This method can be performed on trial data or block average data, but it is more powerful with block average data.

在单个试验和块平均数据上测试学习函数的曲率。
许多模型对学习过程提供了不同的解释,其中一些模型预测不同条件下的学习率是相等的。评估这个等式的最简单方法是评估每个条件下的曲率参数,然后进行统计检验。然而,这种方法高度依赖于拟合过程,这可能会带来难以识别的内置偏差。对每个训练块的数据进行平均将有助于减少试验数据中存在的噪声,但平均会对曲线产生严重的失真,从而无法再通过原始函数进行拟合。在本文中,我们首先演示了块平均导致的失真。块平均学习函数一旦已知,就可以用来提取在块或会话上平均性能时的参数。平均值的使用消除了数据中存在的噪声的重要部分,并允许学习曲线参数的良好恢复。曲率的相等性可以用线性假设的检验来检验。该方法可以在试验数据或块平均数据上执行,但在块平均数据上更强大。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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