心理学
认知科学
工作记忆
编码(社会科学)
认知心理学
预测编码
短时记忆
神经科学
认知
统计
数学
作者
Jake P. Stroud,John Duncan,Máté Lengyel
标识
DOI:10.1016/j.tics.2024.02.011
摘要
Working memory (WM) is a fundamental aspect of cognition. WM maintenance is classically thought to rely on stable patterns of neural activities. However, recent evidence shows that neural population activities during WM maintenance undergo dynamic variations before settling into a stable pattern. Although this has been difficult to explain theoretically, neural network models optimized for WM typically also exhibit such dynamics. Here, we examine stable versus dynamic coding in neural data, classical models, and task-optimized networks. We review principled mathematical reasons for why classical models do not, while task-optimized models naturally do exhibit dynamic coding. We suggest an update to our understanding of WM maintenance, in which dynamic coding is a fundamental computational feature rather than an epiphenomenon.
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