Complementary Structure-Learning Neural Networks for Relational Reasoning.

Jacob Russin, Maryam Zolfaghar, Seongmin A Park, Erie Boorman, Randall C O'Reilly
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Abstract

The neural mechanisms supporting flexible relational inferences, especially in novel situations, are a major focus of current research. In the complementary learning systems framework, pattern separation in the hippocampus allows rapid learning in novel environments, while slower learning in neocortex accumulates small weight changes to extract systematic structure from well-learned environments. In this work, we adapt this framework to a task from a recent fMRI experiment where novel transitive inferences must be made according to implicit relational structure. We show that computational models capturing the basic cognitive properties of these two systems can explain relational transitive inferences in both familiar and novel environments, and reproduce key phenomena observed in the fMRI experiment.

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用于关系推理的互补结构学习神经网络。
支持灵活关系推理的神经机制,特别是在新情况下的神经机制,是当前研究的一个主要焦点。在互补学习系统框架中,海马体中的模式分离允许在新环境中快速学习,而新皮层中较慢的学习积累了小的权重变化,以从已习得的环境中提取系统结构。在这项工作中,我们将该框架适应于最近的功能磁共振成像实验任务,其中必须根据隐式关系结构做出新的传递推理。我们发现,捕捉这两个系统的基本认知特性的计算模型可以解释在熟悉和新环境中的关系传递推理,并重现在功能磁共振成像实验中观察到的关键现象。
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