CNRS, LPC, Aix Marseille Univ, Marseille, France.
ILCB, Aix Marseille Univ, Aix-en-Provence, France.
PLoS One. 2022 Jul 14;17(7):e0270580. doi: 10.1371/journal.pone.0270580. eCollection 2022.
Statistical learning refers to our sensitivity to the distributional properties of our environment. Humans have been shown to readily detect the dependency relationship of events that occur adjacently in a stream of stimuli but processing non-adjacent dependencies (NADs) appears more challenging. In the present study, we tested the ability of human participants to detect NADs in a new Hebb-naming task that has been proposed recently to study regularity detection in a noisy environment. In three experiments, we found that most participants did not manage to extract NADs. These results suggest that the ability to learn NADs in noise is the exception rather than the rule. They provide new information about the limits of statistical learning mechanisms.
统计学习是指我们对环境分布特性的敏感性。已经证明,人类能够轻易地发现刺激流中相邻事件之间的依赖关系,但处理非相邻依赖关系(NADs)似乎更具挑战性。在本研究中,我们测试了人类参与者在最近提出的一种新的赫布命名任务中检测 NADs 的能力,该任务旨在研究嘈杂环境中的规律性检测。在三个实验中,我们发现大多数参与者未能提取 NADs。这些结果表明,在噪声中学习 NADs 的能力是例外而不是规则。它们为统计学习机制的局限性提供了新的信息。