James Antony, Xiaonan L Liu, Yicong Zheng, Charan Ranganath, Randall C O'Reilly
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引用次数: 0
摘要
有些神经表征会在多个时间尺度上逐渐发生变化。在这里,我们认为对这种 "漂移 "进行建模有助于解释间距效应(分布式学习的长期益处),即存储的和当前的时间背景活动模式之间的差异会产生更大的错误驱动学习。我们训练了一个符合神经生物学现实的内侧皮层和海马模型,让它与在学习发作之间和/或最终保留间隔之前漂移的时间上下文向量一起学习配对联想。与间距效应一致的是,漂移越大,保留间隔越长,模型的回忆效果越好。对模型机制的剖析显示,更大的漂移增加了错误驱动的学习,加强了漂移较慢的时空语境神经元的权重(时空抽象),并改善了线索与目标的直接关联(去语境化)。耐人寻味的是,这些结果表明,通常被认为只发生在新皮层的去语境化现象也可能发生在海马本身。总之,我们的研究结果为学习过程中的间距效应和错误等既定学习概念提供了机制上的形式化。(PsycInfo Database Record (c) 2024 APA, 版权所有)。
Memory out of context: Spacing effects and decontextualization in a computational model of the medial temporal lobe.
Some neural representations gradually change across multiple timescales. Here we argue that modeling this "drift" could help explain the spacing effect (the long-term benefit of distributed learning), whereby differences between stored and current temporal context activity patterns produce greater error-driven learning. We trained a neurobiologically realistic model of the entorhinal cortex and hippocampus to learn paired associates alongside temporal context vectors that drifted between learning episodes and/or before final retention intervals. In line with spacing effects, greater drift led to better model recall after longer retention intervals. Dissecting model mechanisms revealed that greater drift increased error-driven learning, strengthened weights in slower drifting temporal context neurons (temporal abstraction), and improved direct cue-target associations (decontextualization). Intriguingly, these results suggest that decontextualization-generally ascribed only to the neocortex-can occur within the hippocampus itself. Altogether, our findings provide a mechanistic formalization for established learning concepts such as spacing effects and errors during learning. (PsycInfo Database Record (c) 2024 APA, all rights reserved).
期刊介绍:
Psychological Review publishes articles that make important theoretical contributions to any area of scientific psychology, including systematic evaluation of alternative theories.