Mack Michael L, Preston Alison R, Love Bradley C
Center for Learning and Memory and Department of Psychology, The University of Texas at Austin, 1 University Station C7000, Austin, TX 78712-0805, USA.
Curr Biol. 2013 Oct 21;23(20):2023-7. doi: 10.1016/j.cub.2013.08.035. Epub 2013 Oct 3.
Acts of cognition can be described at different levels of analysis: what behavior should characterize the act, what algorithms and representations underlie the behavior, and how the algorithms are physically realized in neural activity [1]. Theories that bridge levels of analysis offer more complete explanations by leveraging the constraints present at each level [2-4]. Despite the great potential for theoretical advances, few studies of cognition bridge levels of analysis. For example, formal cognitive models of category decisions accurately predict human decision making [5, 6], but whether model algorithms and representations supporting category decisions are consistent with underlying neural implementation remains unknown. This uncertainty is largely due to the hurdle of forging links between theory and brain [7-9]. Here, we tackle this critical problem by using brain response to characterize the nature of mental computations that support category decisions to evaluate two dominant, and opposing, models of categorization. We found that brain states during category decisions were significantly more consistent with latent model representations from exemplar [5] rather than prototype theory [10, 11]. Representations of individual experiences, not the abstraction of experiences, are critical for category decision making. Holding models accountable for behavior and neural implementation provides a means for advancing more complete descriptions of the algorithms of cognition.
该行为应具有何种特征,构成该行为的算法和表征是什么,以及这些算法在神经活动中是如何具体实现的[1]。跨越分析层面的理论通过利用每个层面存在的限制条件,提供了更完整的解释[2 - 4]。尽管理论进步潜力巨大,但很少有认知研究能跨越分析层面。例如,类别决策的形式认知模型能准确预测人类决策[5, 6],但支持类别决策的模型算法和表征是否与潜在的神经实现一致仍不清楚。这种不确定性很大程度上是由于在理论与大脑之间建立联系存在障碍[7 - 9]。在此,我们通过利用大脑反应来刻画支持类别决策的心理计算的本质,以评估两种主要且相互对立的分类模型,从而解决这一关键问题。我们发现,类别决策过程中的大脑状态与范例模型[5]的潜在模型表征显著更一致,而非原型理论[10, 11]。个体经验的表征,而非经验的抽象,对类别决策至关重要。要求模型对行为和神经实现负责,为推进对认知算法更完整的描述提供了一种方法。