Quantitative Linguistics Group, Eberhard Karls University of Tübingen.
Institut für Germanistik, Universität Bern.
Cogn Sci. 2024 Feb;48(2):e13404. doi: 10.1111/cogs.13404.
Sequence learning is fundamental to a wide range of cognitive functions. Explaining how sequences-and the relations between the elements they comprise-are learned is a fundamental challenge to cognitive science. However, although hundreds of articles addressing this question are published each year, the actual learning mechanisms involved in the learning of sequences are rarely investigated. We present three experiments that seek to examine these mechanisms during a typing task. Experiments 1 and 2 tested learning during typing single letters on each trial. Experiment 3 tested for "chunking" of these letters into "words." The results of these experiments were used to examine the mechanisms that could best account for them, with a focus on two particular proposals: statistical transitional probability learning and discriminative error-driven learning. Experiments 1 and 2 showed that error-driven learning was a better predictor of response latencies than either n-gram frequencies or transitional probabilities. No evidence for chunking was found in Experiment 3, probably due to interspersing visual cues with the motor response. In addition, learning occurred across a greater distance in Experiment 1 than Experiment 2, suggesting that the greater predictability that comes with increased structure leads to greater learnability. These results shed new light on the mechanism responsible for sequence learning. Despite the widely held assumption that transitional probability learning is essential to this process, the present results suggest instead that the sequences are learned through a process of discriminative learning, involving prediction and feedback from prediction error.
序列学习是广泛的认知功能的基础。解释序列——以及它们所包含的元素之间的关系——是认知科学的一个基本挑战。然而,尽管每年都有数百篇文章探讨这个问题,但序列学习中涉及的实际学习机制却很少被研究。我们提出了三个实验,旨在在打字任务中检查这些机制。实验 1 和实验 2 测试了在每次试验中单独输入单个字母时的学习情况。实验 3 测试了这些字母是否可以“组合”成“单词”。这些实验的结果被用来检查能够最好地解释这些结果的机制,重点关注两个特别的提议:统计过渡概率学习和辨别错误驱动学习。实验 1 和实验 2 表明,错误驱动学习是预测反应时的更好指标,而不是 n 元频率或过渡概率。在实验 3 中没有发现组合的证据,可能是由于视觉提示与运动反应交织在一起。此外,在实验 1 中学习的距离大于实验 2,这表明随着结构的增加,可预测性的增加会导致更高的可学习性。这些结果为负责序列学习的机制提供了新的线索。尽管人们普遍认为过渡概率学习对这一过程至关重要,但目前的结果表明,序列是通过一个涉及预测和来自预测错误的反馈的辨别学习过程来学习的。