McIlvane William J, Kledaras Joanne B, Gerard Christophe J, Wilde Lorin, Smelson David
University of Massachusetts Medical School, Worcester, MA, 01655, United States.
University of Massachusetts Medical School, Worcester, MA, 01655, United States.
Behav Processes. 2018 Jul;152:18-25. doi: 10.1016/j.beproc.2018.03.001. Epub 2018 Mar 12.
A few noteworthy exceptions notwithstanding, quantitative analyses of relational learning are most often simple descriptive measures of study outcomes. For example, studies of stimulus equivalence have made much progress using measures such as percentage consistent with equivalence relations, discrimination ratio, and response latency. Although procedures may have ad hoc variations, they remain fairly similar across studies. Comparison studies of training variables that lead to different outcomes are few. Yet to be developed are tools designed specifically for dynamic and/or parametric analyses of relational learning processes. This paper will focus on recent studies to develop (1) quality computer-based programmed instruction for supporting relational learning in children with autism spectrum disorders and intellectual disabilities and (2) formal algorithms that permit ongoing, dynamic assessment of learner performance and procedure changes to optimize instructional efficacy and efficiency. Because these algorithms have a strong basis in evidence and in theories of stimulus control, they may have utility also for basic and translational research. We present an overview of the research program, details of algorithm features, and summary results that illustrate their possible benefits. It also presents arguments that such algorithm development may encourage parametric research, help in integrating new research findings, and support in-depth quantitative analyses of stimulus control processes in relational learning. Such algorithms may also serve to model control of basic behavioral processes that is important to the design of effective programmed instruction for human learners with and without functional disabilities.
尽管有一些值得注意的例外情况,但关系学习的定量分析大多只是对研究结果的简单描述性度量。例如,刺激等效性研究在使用诸如与等效关系一致的百分比、辨别率和反应潜伏期等度量方面取得了很大进展。尽管程序可能存在临时变化,但不同研究中的程序仍然相当相似。关于导致不同结果的训练变量的比较研究很少。专门为关系学习过程的动态和/或参数分析设计的工具尚未开发出来。本文将重点关注最近的研究,这些研究旨在开发:(1)高质量的基于计算机的程序教学,以支持自闭症谱系障碍和智力残疾儿童的关系学习;(2)形式化算法,允许对学习者的表现和程序变化进行持续的动态评估,以优化教学效果和效率。由于这些算法有坚实的证据基础和刺激控制理论基础,它们可能对基础研究和转化研究也有用。我们概述了研究计划、算法特征的细节以及说明其可能益处的总结结果。本文还提出了这样的观点,即这种算法开发可能会鼓励参数研究,有助于整合新的研究发现,并支持对关系学习中刺激控制过程进行深入的定量分析。这样的算法还可以用于模拟基本行为过程的控制,这对于为有或没有功能障碍的人类学习者设计有效的程序教学非常重要。