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精炼实践法则。

Refining the law of practice.

机构信息

Department of Psychology, Vanderbilt University.

School of Psychology, University of Newcastle.

出版信息

Psychol Rev. 2018 Jul;125(4):592-605. doi: 10.1037/rev0000105.

Abstract

The "law of practice"-a simple nonlinear function describing the relationship between mean response time (RT) and practice-has provided a practically and theoretically useful way of quantifying the speed-up that characterizes skill acquisition. Early work favored a power law, but this was shown to be an artifact of biases caused by averaging over participants who are individually better described by an exponential law. However, both power and exponential functions make the strong assumption that the speedup always proceeds at a steadily decreasing rate, even though there are sometimes clear exceptions. We propose a new law that can both accommodate an initial delay resulting in a slower-faster-slower rate of learning, with either power or exponential forms as limiting cases, and which can account for not only mean RT but also the effect of practice on the entire distribution of RT. We evaluate this proposal with data from a broad array of tasks using hierarchical Bayesian modeling, which pools data across participants while minimizing averaging artifacts, and using inference procedures that take into account differences in flexibility among laws. In a clear majority of paradigms our results supported a delayed exponential law. (PsycINFO Database Record

摘要

“实践定律”是一个简单的非线性函数,用于描述平均反应时间 (RT) 与练习之间的关系,它为量化技能习得的加速提供了一种实用且理论上有用的方法。早期的研究倾向于幂律,但后来发现这是由于对个体表现更好地描述为指数律的参与者进行平均而产生的偏差造成的。然而,幂律和指数函数都假设加速总是以稳定的递减速率进行,尽管有时存在明显的例外。我们提出了一种新的定律,它既可以适应初始延迟,从而导致学习的慢-快-慢速率,又可以作为极限情况包含幂律和指数律,并且不仅可以解释平均 RT,还可以解释练习对整个 RT 分布的影响。我们使用层次贝叶斯建模来评估这个提议,该模型在最小化平均偏差的同时在参与者之间汇集数据,并使用考虑定律之间灵活性差异的推理程序。在大多数范式中,我们的结果都支持延迟指数定律。

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