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将联想学习的误差驱动模型与决策的证据积累模型相结合。

Combining error-driven models of associative learning with evidence accumulation models of decision-making.

机构信息

School of Psychology, The University of Queensland, St. Lucia, QLD, 4072, Australia.

Melbourne School of Psychological Sciences, The University of Melbourne, Melbourne, Australia.

出版信息

Psychon Bull Rev. 2019 Jun;26(3):868-893. doi: 10.3758/s13423-019-01570-4.

DOI:10.3758/s13423-019-01570-4
PMID:30719625
Abstract

As people learn a new skill, performance changes along two fundamental dimensions: Responses become progressively faster and more accurate. In cognitive psychology, these facets of improvement have typically been addressed by separate classes of theories. Reductions in response time (RT) have usually been addressed by theories of skill acquisition, whereas increases in accuracy have been explained by associative learning theories. To date, relatively little work has examined how changes in RT relate to changes in response accuracy, and whether these changes can be accounted for quantitatively within a single theoretical framework. The current work examines joint changes in accuracy and RT in a probabilistic category learning task. We report a model-based analysis of changes in the shapes of RT distributions for different category responses at the level of individual stimuli over the course of learning. We show that changes in performance are determined solely by changes in the quality of information entering the decision process. We then develop a new model that combines an associative learning front end with a sequential sampling model of the decision process, showing that the model provides a good account of all aspects of the learning data. We conclude by discussing potential extensions of the model and future directions for theoretical development that are opened up by our findings.

摘要

当人们学习新技能时,表现会沿着两个基本维度发生变化:反应速度逐渐加快,准确性逐渐提高。在认知心理学中,这些改进方面通常由不同类别的理论来解释。反应时间(RT)的减少通常由技能获取理论来解释,而准确性的提高则由联想学习理论来解释。迄今为止,相对较少的工作研究了 RT 的变化与反应准确性的变化之间的关系,以及这些变化是否可以在单个理论框架内进行定量解释。本研究在概率类别学习任务中考察了准确性和 RT 的联合变化。我们报告了一种基于模型的分析,该分析针对学习过程中不同类别反应的 RT 分布形状在单个刺激水平上的变化。我们表明,性能的变化仅由进入决策过程的信息质量的变化决定。然后,我们开发了一个新模型,该模型将联想学习前端与决策过程的顺序采样模型相结合,表明该模型很好地解释了学习数据的各个方面。最后,我们通过讨论模型的潜在扩展和理论发展的未来方向来结束讨论,这些方向是我们的发现所带来的。

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