Opitz Bertram, Hofmann Juliane
School of Psychology, University of Surrey, Guildford GU2 7XH, UK; Experimental Neuropsychology Unit, Saarland University, 66123 Saarbrücken, Germany.
Experimental Neuropsychology Unit, Saarland University, 66123 Saarbrücken, Germany.
Cogn Psychol. 2015 Mar;77:77-99. doi: 10.1016/j.cogpsych.2015.02.003. Epub 2015 Mar 9.
A current theoretical debate regards whether rule-based or similarity-based learning prevails during artificial grammar learning (AGL). Although the majority of findings are consistent with a similarity-based account of AGL it has been argued that these results were obtained only after limited exposure to study exemplars, and performance on subsequent grammaticality judgment tests has often been barely above chance level. In three experiments the conditions were investigated under which rule- and similarity-based learning could be applied. Participants were exposed to exemplars of an artificial grammar under different (implicit and explicit) learning instructions. The analysis of receiver operating characteristics (ROC) during a final grammaticality judgment test revealed that explicit but not implicit learning led to rule knowledge. It also demonstrated that this knowledge base is built up gradually while similarity knowledge governed the initial state of learning. Together these results indicate that rule- and similarity-based mechanisms concur during AGL. Moreover, it could be speculated that two different rule processes might operate in parallel; bottom-up learning via gradual rule extraction and top-down learning via rule testing. Crucially, the latter is facilitated by performance feedback that encourages explicit hypothesis testing.
当前的一场理论争论聚焦于在人工语法学习(AGL)过程中,基于规则的学习还是基于相似性的学习占主导地位。尽管大多数研究结果与AGL的基于相似性的观点一致,但有人认为这些结果只是在对学习范例进行有限接触后获得的,并且在随后的语法性判断测试中的表现往往仅略高于随机水平。在三个实验中,研究了可以应用基于规则和基于相似性学习的条件。参与者在不同的(隐性和显性)学习指导下接触人工语法的范例。在最终的语法性判断测试中对接受者操作特征(ROC)的分析表明,显性而非隐性学习导致了规则知识。研究还表明,这个知识库是逐渐建立起来的,而相似性知识则支配着学习的初始状态。这些结果共同表明,在AGL过程中,基于规则和基于相似性的机制同时存在。此外,可以推测可能有两种不同的规则过程并行运作;通过逐步规则提取进行自下而上的学习,以及通过规则测试进行自上而下的学习。至关重要的是,后者通过鼓励显性假设检验的表现反馈而得到促进。