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Complementary learning systems within the hippocampus: a neural network modelling approach to reconciling episodic memory with statistical learning

机译:海马内的补充学习系统:一种神经网络建模方法以协调情景记忆与统计学习

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摘要

A growing literature suggests that the hippocampus is critical for the rapid extraction of regularities from the environment. Although this fits with the known role of the hippocampus in rapid learning, it seems at odds with the idea that the hippocampus specializes in memorizing individual episodes. In particular, the Complementary Learning Systems theory argues that there is a computational trade-off between learning the specifics of individual experiences and regularities that hold across those experiences. We asked whether it is possible for the hippocampus to handle both statistical learning and memorization of individual episodes. We exposed a neural network model that instantiates known properties of hippocampal projections and subfields to sequences of items with temporal regularities. We found that the monosynaptic pathway—the pathway connecting entorhinal cortex directly to region CA1—was able to support statistical learning, while the trisynaptic pathway—connecting entorhinal cortex to CA1 through dentate gyrus and CA3—learned individual episodes, with apparent representations of regularities resulting from associative reactivation through recurrence. Thus, in paradigms involving rapid learning, the computational trade-off between learning episodes and regularities may be handled by separate anatomical pathways within the hippocampus itself.This article is part of the themed issue ‘New frontiers for statistical learning in the cognitive sciences’.
机译:越来越多的文献表明,海马对于从环境中快速提取规律性至关重要。尽管这与海马在快速学习中的已知作用相吻合,但似乎与海马擅长记忆个别发作的观点相矛盾。特别是,补充学习系统理论认为,在学习个人经验的细节与这些经验的规律性之间存在计算上的折衷。我们询问海马是否有可能同时进行统计学习和个别发作的记忆。我们暴露了一个神经网络模型,该模型将具有时间规律性的项序列实例化海马投影和子域的已知属性。我们发现,单突触通路(将内嗅皮层直接连接到CA1区域的通路)能够支持统计学习,而三突触通路(通过齿状回和CA3将内嗅皮层连接到CA1)可以学习单个发作,并明显显示出规律性。从关联重新激活到复发。因此,在涉及快速学习的范式中,学习事件与规律之间的计算折衷可以通过海马自身内部的单独解剖路径来处理。本文是主题“认知科学中统计学习的新领域”的一部分。

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