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Human Rademacher Complexity

机译:人类放射线虫的复杂性

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摘要

We propose to use Rademacher complexity, originally developed in computational learning theory, as a measure of human learning capacity. Rademacher complexity measures a learner's ability to fit random labels, and can be used to bound the learner's true error based on the observed training sample error. We first review the definition of Rademacher complexity and its generalization bound. We then describe a "learning the noise" procedure to experimentally measure human Rademacher complexities. The results from empirical studies showed that: (ⅰ) human Rademacher complexity can be successfully measured, (ⅱ) the complexity depends on the domain and training sample size in intuitive ways, (ⅲ) human learning respects the generalization bounds, (ⅳ) the bounds can be useful in predicting the danger of overfitting in human learning. Finally, we discuss the potential applications of human Rademacher complexity in cognitive science.
机译:我们建议使用最初在计算学习理论中发展的Rademacher复杂度来衡量人类的学习能力。 Rademacher的复杂度可衡量学习者拟合随机标签的能力,并可根据观​​察到的训练样本错误来限制学习者的真实错误。我们首先回顾Rademacher复杂度的定义及其推广范围。然后,我们描述了一种“学习噪声”程序,以实验方式测量人类Rademacher的复杂性。实证研究的结果表明:(ⅰ)人类Rademacher的复杂度可以成功地测量;(ⅱ)复杂度取决于领域和训练样本量的直观方式;(ⅲ)人类学习尊重泛化界限;(ⅳ)界线可用于预测人类学习过度适应的危险。最后,我们讨论了人类Rademacher复杂性在认知科学中的潜在应用。

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