Department of Education, University of Oxford, Oxford, United Kingdom.
Derbyshire Healthcare NHS Foundation Trust, Matlock, United Kingdom.
PLoS One. 2024 Sep 20;19(9):e0308653. doi: 10.1371/journal.pone.0308653. eCollection 2024.
Implicit statistical learning, whereby predictable relationships between stimuli are detected without conscious awareness, is important for language acquisition. However, while this process is putatively implicit, it is often assessed using measures that require explicit reflection and conscious decision making. Here, we conducted three experiments combining an artificial grammar learning paradigm with a serial reaction time (SRT-AGL) task, to measure statistical learning of adjacent and nonadjacent dependencies implicitly, without conscious decision making. Participants viewed an array of six visual stimuli and were presented with a sequence of three auditory (nonsense words, Expt. 1; names of familiar objects, Expt. 2) or visual (abstract shapes, Expt. 3) cues and were asked to click on the corresponding visual stimulus as quickly as possible. In each experiment, the final stimulus in the sequence was predictable based on items earlier in the sequence. Faster responses to this predictable final stimulus compared to unpredictable stimuli would provide evidence of implicit statistical learning, without requiring explicit decision making or conscious reflection. Despite previous positive results (Christiansen et al. 2009 and Misyak et al. 2010) we saw little evidence of implicit statistical learning in any of the experiments, suggesting that in this case, these SRT-AGL tasks were not an effective measure implicit statistical learning.
内隐统计学习,即通过无意识的方式感知刺激之间可预测的关系,对于语言习得很重要。然而,尽管这个过程是内隐的,但通常使用需要明确的反思和有意识的决策的测量方法来评估。在这里,我们结合人工语法学习范式和序列反应时间(SRT-AGL)任务进行了三个实验,旨在通过无需有意识决策的方式,对相邻和非相邻依赖性进行内隐的统计学习测量。参与者观看了一组六个视觉刺激,并呈现了三个听觉(无意义单词,实验 1;熟悉物体的名称,实验 2)或视觉(抽象形状,实验 3)线索,并被要求尽快点击相应的视觉刺激。在每个实验中,序列中的最后一个刺激是根据序列中较早的项目来预测的。与不可预测的刺激相比,对可预测的最后一个刺激更快的反应将提供内隐统计学习的证据,而无需明确的决策或有意识的反思。尽管之前有积极的结果(Christiansen 等人,2009 年;Misyak 等人,2010 年),但我们在任何实验中都很少看到内隐统计学习的证据,这表明在这种情况下,这些 SRT-AGL 任务并不是内隐统计学习的有效衡量标准。