Barth Marius, Stahl Christoph, Haider Hilde
Department of Psychology, University of Cologne, Germany.
J Cogn. 2025 Apr 17;8(1):30. doi: 10.5334/joc.439. eCollection 2025.
Sequence learning in the serial response time task (SRTT) is one of few learning phenomena where researchers agree that such learning may proceed in the absence of awareness, while it is also possible to explicitly learn a sequence of events. In the past few decades, research into sequence learning largely focused on the type of representation that may underlie implicit sequence learning, and whether or not two independent learning systems are necessary to explain qualitative differences between implicit and explicit learning. Using the drift-diffusion model, here we take a cognitive-processes perspective on sequence learning and investigate the cognitive operations that benefit from implicit and explicit sequence learning (e.g., stimulus detection and encoding, response selection, and response execution). To separate the processes involved in expressing implicit versus explicit knowledge, we manipulated explicit sequence knowledge independently of the opportunity to express such knowledge, and analyzed the resulting performance data with a drift-diffusion model to disentangle the contributions of these sub-processes. Results revealed that implicit sequence learning does not affect stimulus processing, but benefits response selection. Moreover, beyond response selection, response execution was affected. Explicit sequence knowledge did not change this pattern if participants worked on probabilistic materials, where it is difficult to anticipate the next response. However, if materials were deterministic, explicit knowledge enabled participants to switch from stimulus-based to plan-based action control, which was reflected in ample changes in the cognitive processes involved in performing the task. First implications for theories of sequence learning, and how the diffusion model may be helpful in future research, are dicussed.
序列反应时任务(SRTT)中的序列学习是少数几种学习现象之一,研究者们一致认为,这种学习可能在无意识的情况下进行,同时也有可能明确地学习一系列事件。在过去几十年里,序列学习的研究主要集中在可能构成内隐序列学习基础的表征类型,以及是否需要两个独立的学习系统来解释内隐学习和外显学习之间的质性差异。利用漂移扩散模型,我们在这里从认知过程的角度探讨序列学习,并研究从内隐和外显序列学习中受益的认知操作(例如,刺激检测与编码、反应选择和反应执行)。为了区分表达内隐知识和外显知识所涉及的过程,我们独立于表达此类知识的机会来操纵外显序列知识,并使用漂移扩散模型分析由此产生的绩效数据,以厘清这些子过程的贡献。结果表明,内隐序列学习不影响刺激处理,但有利于反应选择。此外,除了反应选择外,反应执行也受到影响。如果参与者处理的是概率性材料,外显序列知识不会改变这种模式,因为在这种情况下很难预测下一个反应。然而,如果材料是确定性的,外显知识会使参与者从基于刺激的行动控制转向基于计划的行动控制,这反映在执行任务所涉及的认知过程中出现了大量变化。我们讨论了序列学习理论的初步影响,以及扩散模型在未来研究中可能如何发挥作用。