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    Algorithmic analysis of relational learning processes in instructional technology: Some implications for basic, translational, and applied research

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    Authors
    McIlvane, William J.
    Kledaras, Joanne B.
    Gerard, Christophe J.
    Wilde, Lorin
    Smelson, David A.
    UMass Chan Affiliations
    Implementation Science and Practice Advances Research Center
    Eunice Kennedy Shriver Center
    Department of Psychiatry
    Document Type
    Journal Article
    Publication Date
    2018-07-01
    Keywords
    Computerized algorithmic learning supports
    Learning by exclusion
    Stimulus control
    Stimulus equivalence
    Applied Behavior Analysis
    Behavior and Behavior Mechanisms
    Educational Psychology
    Educational Technology
    Mental and Social Health
    Psychiatry
    Psychiatry and Psychology
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    Link to Full Text
    https://doi.org/10.1016/j.beproc.2018.03.001
    Abstract
    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.
    Source

    Behav Processes. 2018 Jul;152:18-25. doi: 10.1016/j.beproc.2018.03.001. Epub 2018 Mar 12. Link to article on publisher's site

    DOI
    10.1016/j.beproc.2018.03.001
    Permanent Link to this Item
    http://hdl.handle.net/20.500.14038/46297
    PubMed ID
    29544867
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    Link to Article in PubMed

    ae974a485f413a2113503eed53cd6c53
    10.1016/j.beproc.2018.03.001
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