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将视觉信息转化为动作预测:动作和非动作情境中的统计学习

Translating visual information into action predictions: Statistical learning in action and nonaction contexts.

作者信息

Monroy Claire D, Gerson Sarah A, Hunnius Sabine

机构信息

Donders Institute for Brain, Cognition and Behaviour, Radboud University Nijmegen, Nijmegen, The Netherlands.

Department of Otolaryngology, Ohio State University Wexner Medical Center, Columbus, OH, USA.

出版信息

Mem Cognit. 2018 May;46(4):600-613. doi: 10.3758/s13421-018-0788-6.

Abstract

Humans are sensitive to the statistical regularities in action sequences carried out by others. In the present eyetracking study, we investigated whether this sensitivity can support the prediction of upcoming actions when observing unfamiliar action sequences. In two between-subjects conditions, we examined whether observers would be more sensitive to statistical regularities in sequences performed by a human agent versus self-propelled 'ghost' events. Secondly, we investigated whether regularities are learned better when they are associated with contingent effects. Both implicit and explicit measures of learning were compared between agent and ghost conditions. Implicit learning was measured via predictive eye movements to upcoming actions or events, and explicit learning was measured via both uninstructed reproduction of the action sequences and verbal reports of the regularities. The findings revealed that participants, regardless of condition, readily learned the regularities and made correct predictive eye movements to upcoming events during online observation. However, different patterns of explicit-learning outcomes emerged following observation: Participants were most likely to re-create the sequence regularities and to verbally report them when they had observed an actor create a contingent effect. These results suggest that the shift from implicit predictions to explicit knowledge of what has been learned is facilitated when observers perceive another agent's actions and when these actions cause effects. These findings are discussed with respect to the potential role of the motor system in modulating how statistical regularities are learned and used to modify behavior.

摘要

人类对他人执行的动作序列中的统计规律很敏感。在当前的眼动追踪研究中,我们调查了这种敏感性在观察不熟悉的动作序列时是否能支持对即将发生的动作的预测。在两个被试间条件下,我们考察了观察者对人类主体执行的序列与自行移动的“幽灵”事件中的统计规律是否更敏感。其次,我们研究了规律与偶然效应相关联时是否能被更好地学习。我们比较了主体条件和幽灵条件下学习的内隐和外显测量方法。内隐学习通过对即将发生的动作或事件的预测性眼动来测量,外显学习通过动作序列的无指导再现和规律的口头报告来测量。研究结果表明,无论处于何种条件,参与者在在线观察期间都能轻松学习规律并对即将发生的事件做出正确的预测性眼动。然而,观察后出现了不同的外显学习结果模式:当参与者观察到一个主体产生了偶然效应时,他们最有可能重新创建序列规律并进行口头报告。这些结果表明,当观察者感知到另一个主体的动作且这些动作产生了效果时,从内隐预测到所学内容的外显知识的转变会更容易。我们将结合运动系统在调节统计规律的学习方式以及如何用于修改行为方面的潜在作用来讨论这些发现。

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