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Combining Computational Modeling and Neuroimaging to Examine Multiple Category Learning Systems in the Brain

机译:结合计算模型和神经成像检查大脑中的多类别学习系统

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摘要

Considerable evidence has argued in favor of multiple neural systems supporting human category learning, one based on conscious rule inference and one based on implicit information integration. However, there have been few attempts to study potential system interactions during category learning. The PINNACLE (Parallel Interactive Neural Networks Active in Category Learning) model incorporates multiple categorization systems that compete to provide categorization judgments about visual stimuli. Incorporating competing systems requires inclusion of cognitive mechanisms associated with resolving this competition and creates a potential credit assignment problem in handling feedback. The hypothesized mechanisms make predictions about internal mental states that are not always reflected in choice behavior, but may be reflected in neural activity. Two prior functional magnetic resonance imaging (fMRI) studies of category learning were re-analyzed using PINNACLE to identify neural correlates of internal cognitive states on each trial. These analyses identified additional brain regions supporting the two types of category learning, regions particularly active when the systems are hypothesized to be in maximal competition, and found evidence of covert learning activity in the “off system” (the category learning system not currently driving behavior). These results suggest that PINNACLE provides a plausible framework for how competing multiple category learning systems are organized in the brain and shows how computational modeling approaches and fMRI can be used synergistically to gain access to cognitive processes that support complex decision-making machinery.
机译:大量证据支持支持人类类别学习的多种神经系统,一种基于自觉规则推理,另一种基于隐式信息集成。但是,几乎没有尝试研究类别学习期间潜在的系统交互。 PINNACLE(活跃在类别学习中的并行交互式神经网络)模型包含多个分类系统,这些系统竞争提供有关视觉刺激的分类判断。合并竞争系统需要包括与解决竞争相关的认知机制,并在处理反馈时产生潜在的信用分配问题。假设的机制对内部心理状态做出预测,这些预测并不总是反映在选择行为中,而是可能反映在神经活动中。使用PINNACLE重新分析了两个先前的类别学习的功能磁共振成像(fMRI)研究,以识别每个试验中内部认知状态的神经相关性。这些分析确定了支持两种类别学习的其他大脑区域,这些区域在假设系统处于最大竞争状态时特别活跃,并发现了“离线系统”(类别学习系统当前未驱动行为)中秘密学习活动的证据。 )。这些结果表明,PINNACLE为如何在大脑中组织竞争性多类别学习系统提供了一个合理的框架,并显示了如何协同使用计算建模方法和fMRI来访问支持复杂决策机制的认知过程。

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