Institute for Biomagnetism and Biosignal Analysis, University Hospital Münster, Münster, Germany.
Department of Psychology, University of Münster, Münster, Germany.
PLoS One. 2020 Apr 13;15(4):e0231021. doi: 10.1371/journal.pone.0231021. eCollection 2020.
While prediction errors have been established to instigate learning through model adaptation, recent studies have stressed the role of model-compliant events in predictive processing. Specifically, probabilistic information at critical points in time (so-called checkpoints) has been suggested to be sampled in order to evaluate the internal model, particularly in uncertain contexts. This way, initial model-based expectations are iteratively reaffirmed under uncertainty, even in the absence of prediction errors. Using electroencephalography (EEG), the present study aimed to investigate the interplay of such global uncertainty information and local adjustment cues prompting on-line adjustments of expectations. Within a stream of single digits, participants were to detect ordered sequences (i.e., 3-4-5-6-7) that had a regular length of five digits and were occasionally extended to seven digits. Over time, these extensions were either rare (low irreducible uncertainty) or frequent (high uncertainty) and could be unexpected or indicated by incidental colour cues. Accounting for cue information, an N400 component was revealed as the correlate of locally unexpected (vs expected) outcomes, reflecting effortful integration of incongruous information. As for model-compliant information, multivariate pattern decoding within the P3b time frame demonstrated effective exploitation of local (adjustment cues vs non-informative analogues) and global information (high vs low uncertainty regular endings) sampled from probabilistic events. Finally, superior fit of a global model (disregarding local adjustments) compared to a local model (including local adjustments) in a representational similarity analysis underscored the precedence of global reference frames in hierarchical predictive processing. Overall, results suggest that just like error-induced model adaptation, model evaluation is not limited to either local or global information. Following the hierarchical organisation of predictive processing, model evaluation too can occur at several levels of the processing hierarchy.
虽然预测误差已被确定为通过模型自适应引发学习,但最近的研究强调了模型一致事件在预测处理中的作用。具体来说,已经有人提出,在关键时间点(所谓的检查点)采样概率信息,以便评估内部模型,尤其是在不确定的情况下。这样,即使在没有预测误差的情况下,初始基于模型的期望也会在不确定性下迭代地得到确认。本研究使用脑电图 (EEG) 来研究这种全局不确定性信息和提示在线调整期望的局部调整线索之间的相互作用。在一连串的单个数字中,参与者要检测有序序列(即 3-4-5-6-7),这些序列的长度为五个数字,偶尔会扩展到七个数字。随着时间的推移,这些扩展要么很少见(低不可减少的不确定性),要么很频繁(高不确定性),并且可能是意外的,或者由偶然的颜色线索指示。考虑到线索信息,N400 成分被揭示为局部意外(与预期相比)结果的相关物,反映了不一致信息的费力整合。对于符合模型的信息,在 P3b 时间范围内的多元模式解码表明,从概率事件中有效利用了局部(调整线索与非信息性类似物)和全局信息(高不确定性规则结尾与低不确定性规则结尾)。最后,在代表性相似性分析中,全局模型(忽略局部调整)的拟合优于局部模型(包括局部调整),这突显了在分层预测处理中全局参考框架的优先级。总的来说,结果表明,就像误差引起的模型自适应一样,模型评估不仅限于局部或全局信息。根据预测处理的分层组织,模型评估也可以在处理层次结构的几个级别上进行。