Wynton Sarah K A, Anglim Jeromy
School of Psychology, Deakin University.
J Exp Psychol Learn Mem Cogn. 2017 Oct;43(10):1630-1642. doi: 10.1037/xlm0000404. Epub 2017 Apr 10.
While researchers have often sought to understand the learning curve in terms of multiple component processes, few studies have measured and mathematically modeled these processes on a complex task. In particular, there remains a need to reconcile how abrupt changes in strategy use can co-occur with gradual changes in task completion time. Thus, the current study aimed to assess the degree to which strategy change was abrupt or gradual, and whether strategy aggregation could partially explain gradual performance change. It also aimed to show how Bayesian methods could be used to model the effect of practice on strategy use. To achieve these aims, 162 participants completed 15 blocks of practice on a complex computer-based task-the Wynton-Anglim booking (WAB) task. The task allowed for multiple component strategies (i.e., memory retrieval, information reduction, and insight) that could also be aggregated to a global measure of strategy use. Bayesian hierarchical models were used to compare abrupt and gradual functions of component and aggregate strategy use. Task completion time was well-modeled by a power function, and global strategy use explained substantial variance in performance. Change in component strategy use tended to be abrupt, whereas change in global strategy use was gradual and well-modeled by a power function. Thus, differential timing of component strategy shifts leads to gradual changes in overall strategy efficiency, and this provides one reason for why smooth learning curves can co-occur with abrupt changes in strategy use. (PsycINFO Database Record
虽然研究人员常常试图从多个组成过程的角度来理解学习曲线,但很少有研究在复杂任务中对这些过程进行测量并建立数学模型。特别是,仍有必要协调策略使用的突然变化如何能与任务完成时间的逐渐变化同时出现。因此,本研究旨在评估策略变化是突然的还是渐进的程度,以及策略整合是否能部分解释表现的逐渐变化。它还旨在展示如何使用贝叶斯方法来模拟练习对策略使用的影响。为了实现这些目标,162名参与者在一项基于计算机的复杂任务——温顿 - 安格林预订(WAB)任务上完成了15个练习块。该任务允许使用多种组成策略(即记忆检索、信息简化和洞察力),这些策略也可以整合为一个全局的策略使用度量。贝叶斯层次模型被用于比较组成策略和整合策略使用的突然和渐进函数。任务完成时间通过幂函数得到了很好的建模,并且全局策略使用解释了表现中的大量方差。组成策略使用的变化往往是突然的,而全局策略使用的变化是渐进的,并通过幂函数得到了很好的建模。因此,组成策略转变的不同时间导致了整体策略效率的逐渐变化,这为平滑的学习曲线如何能与策略使用的突然变化同时出现提供了一个原因。(PsycINFO数据库记录