Department of Psychology, University of Muenster, Muenster, Germany.
Otto-Creutzfeldt-Center for Cognitive and Behavioral Neuroscience, University of Muenster, Muenster, Germany.
PLoS One. 2019 Jun 13;14(6):e0218311. doi: 10.1371/journal.pone.0218311. eCollection 2019.
While prediction errors (PE) have been established to drive learning through adaptation of internal models, the role of model-compliant events in predictive processing is less clear. Checkpoints (CP) were recently introduced as points in time where expected sensory input resolved ambiguity regarding the validity of the internal model. Conceivably, these events serve as on-line reference points for model evaluation, particularly in uncertain contexts. Evidence from fMRI has shown functional similarities of CP and PE to be independent of event-related surprise, raising the important question of how these event classes relate to one another. Consequently, the aim of the present study was to characterise the functional relationship of checkpoints and prediction errors in a serial pattern detection task using electroencephalography (EEG). Specifically, we first hypothesised a joint P3b component of both event classes to index recourse to the internal model (compared to non-informative standards, STD). Second, we assumed the mismatch signal of PE to be reflected in an N400 component when compared to CP. Event-related findings supported these hypotheses. We suggest that while model adaptation is instigated by prediction errors, checkpoints are similarly used for model evaluation. Intriguingly, behavioural subgroup analyses showed that the exploitation of potentially informative reference points may depend on initial cue learning: Strict reliance on cue-based predictions may result in less attentive processing of these reference points, thus impeding upregulation of response gain that would prompt flexible model adaptation. Overall, present results highlight the role of checkpoints as model-compliant, informative reference points and stimulate important research questions about their processing as function of learning und uncertainty.
虽然预测误差 (PE) 已被证明通过内部模型的适应性来驱动学习,但模型一致事件在预测处理中的作用还不太清楚。最近引入了检查点 (CP),作为内部模型有效性的预期感觉输入消除歧义的时间点。可以想象,这些事件作为模型评估的在线参考点,特别是在不确定的情况下。来自 fMRI 的证据表明 CP 和 PE 的功能相似性独立于事件相关的惊喜,这就提出了一个重要的问题,即这两类事件如何相互关联。因此,本研究的目的是使用脑电图 (EEG) 来描述序列模式检测任务中检查点和预测误差之间的功能关系。具体来说,我们首先假设这两类事件都有一个共同的 P3b 成分,以指示对内部模型的依赖(与非信息性标准 STD 相比)。其次,我们假设与 CP 相比,PE 的不匹配信号反映在 N400 成分中。事件相关的发现支持了这些假设。我们认为,虽然模型适应性是由预测误差引发的,但检查点也同样用于模型评估。有趣的是,行为亚组分析表明,潜在信息性参考点的利用可能取决于初始线索学习:严格依赖基于线索的预测可能导致对这些参考点的处理不够关注,从而阻碍响应增益的上调,从而促使灵活的模型适应性。总的来说,目前的结果强调了检查点作为符合模型、信息丰富的参考点的作用,并激发了关于它们作为学习和不确定性功能处理的重要研究问题。