Modeling human sequence learning under incidental conditions.

IF 1.3 4区 心理学
F Yeates, F W Jones, A J Wills, R P McLaren, I P L McLaren
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引用次数: 9

Abstract

This research explored the role that associative learning may play in human sequence learning. Two-choice serial reaction time tasks were performed under incidental conditions using 2 different sequences. In both cases, an experimental group was trained on 4 subsequences: LLL, LRL, RLR, and RRR for Group "Same" and LLR, LRR, RLL, and RRL for Group "Different," with left and right counterbalanced across participants. To control for sequential effects, we assayed sequence learning by comparing their performance with that of a control group, which had been trained on a pseudorandom ordering, during a test phase in which both experimental and control groups experienced the same subsequences. Participants in both groups showed sequence learning, but the group trained on "different" learned more and more rapidly. This result is the opposite that predicted by the augmented simple recurrent network used by F. W. Jones and I. P. L. McLaren (2009, Human sequence learning under incidental and intentional conditions, Journal of Experimental Psychology: Animal Behavior Processes, Vol. 35, pp. 538-553), but can be modeled using a reparameterized version of this network that also includes a more realistic representation of the stimulus array, suggesting that the latter may be a better model of human sequence learning under incidental conditions.

偶然条件下人类序列学习建模。
本研究探讨了联想学习在人类序列学习中可能发挥的作用。双选择连续反应时间任务在偶然条件下使用2种不同的序列进行。在这两种情况下,实验组都接受了4个子序列的训练:“相同”组的LLL、LRR、RLR和RRR,“不同”组的LLR、LRR、RLL和RRL,参与者的左右平衡。为了控制序列效应,我们通过将他们的表现与在伪随机顺序上训练的对照组的表现进行比较来分析序列学习,在测试阶段,实验组和对照组都经历了相同的子序列。两组的参与者都表现出了顺序学习,但接受“不同”训练的那组学得越来越快。这一结果与F. W. Jones和I. P. L. McLaren(2009,《偶然和故意条件下的人类序列学习》,《实验心理学杂志》)使用的增强简单循环网络预测的结果相反:动物行为过程,第35卷,第538-553页),但可以使用该网络的重新参数化版本进行建模,该网络还包括刺激阵列的更现实的表示,这表明后者可能是在偶然条件下人类序列学习的更好模型。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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来源期刊
自引率
23.10%
发文量
0
审稿时长
>12 weeks
期刊介绍: The Journal of Experimental Psychology: Animal Learning and Cognition publishes experimental and theoretical studies concerning all aspects of animal behavior processes.
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