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Data-driven sequence learning or search: What are the prerequisitesfor the generation of explicit sequence knowledge?

机译:数据驱动的序列学习或搜索:先决条件用于生成显式序列知识?

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摘要

In incidental sequence learning situations, there is often a number of participants who can report the task-inherent sequential regularity after training. Two kinds of mechanisms for the generation of this explicit knowledge have been proposed in the literature. First, a sequence representation may become explicit when its strength reaches a certain level (), and secondly, explicit knowledge may emerge as the result of a search process that is triggered by unexpected events that occur during task processing and require an explanation (the unexpected-event hypothesis; href="#R15" rid="R15" class=" bibr popnode tag_hotlink tag_tooltip" id="__tag_263622803">Haider & Frensch, 2009). Our study aimed at systematically exploring the contribution of both mechanisms to the generation of explicit sequence knowledge in an incidental learning situation. We varied the amount of specific sequence training and inserted unexpected events into a 6-choice serial reaction time task. Results support the unexpected-event view, as the generation of explicit sequence knowledge could not be predicted by the representation strength acquired through implicit sequence learning. Rather sequence detection turned out to be more likely when participants were shifted to the fixed repeating sequence after training than when practicing one and the same fixed sequencewithout interruption. The behavioral effects of representation strength appearto be related to the effectiveness of unexpected changes in performance astriggers of a controlled search.
机译:在偶然的顺序学习情况下,经常有很多参与者可以在训练后报告任务固有的顺序规律性。文献中已经提出了两种生成这种显式知识的机制。首先,当序列表示的强度达到一定水平()时,它可能变得显式;其次,由于任务处理过程中发生的意外事件触发并要求解释的搜索过程的结果,因此可能出现显式知识。事件假设; href="#R15" rid="R15" class=" bibr popnode tag_hotlink tag_tooltip" id="__tag_263622803"> Haider&Frensch,2009 )。我们的研究旨在系统地探索这两种机制在偶然学习情况下对显式序列知识生成的贡献。我们改变了特定序列训练的数量,并将意外事件插入了6选择序列反应时间任务中。结果支持意外事件视图,因为通过隐式序列学习获得的表示强度无法预测显式序列知识的生成。事实证明,与训练一个相同的固定序列相比,在训练后将参与者转移到固定重复序列时,更有可能进行序列检测没有中断。表象强度的行为影响出现与性能意外变化的有效性有关触发受控搜索。

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