Department of Cognitive, Linguistic, and Psychological Sciences, Brown Institute for Brain Science, Brown University.
Psychol Rev. 2018 Jul;125(4):486-511. doi: 10.1037/rev0000101.
The nature of capacity limits for visual working memory has been the subject of an intense debate that has relied on models that assume items are encoded independently. Here we propose that instead, similar features are jointly encoded through a "chunking" process to optimize performance on visual working memory tasks. We show that such chunking can: (a) facilitate performance improvements for abstract capacity-limited systems, (b) be optimized through reinforcement, (c) be implemented by center-surround dynamics, and (d) increase effective storage capacity at the expense of recall precision. Human performance on a variant of a canonical working memory task demonstrated performance advantages, precision detriments, interitem dependencies, and trial-to-trial behavioral adjustments diagnostic of performance optimization through center-surround chunking. Models incorporating center-surround chunking provided a better quantitative description of human performance in our study as well as in a meta-analytic dataset, and apparent differences in working memory capacity across individuals were attributable to individual differences in the implementation of chunking. Our results reveal a normative rationale for center-surround connectivity in working memory circuitry, call for reevaluation of memory performance differences that have previously been attributed to differences in capacity, and support a more nuanced view of visual working memory capacity limitations: strategic tradeoff between storage capacity and memory precision through chunking contribute to flexible capacity limitations that include both discrete and continuous aspects. (PsycINFO Database Record
视觉工作记忆容量的本质一直是激烈争论的主题,这些争论依赖于假设项目独立编码的模型。在这里,我们提出相反的观点,即相似的特征通过“分块”过程联合编码,以优化视觉工作记忆任务的性能。我们表明,这种分块可以:(a)促进抽象容量受限系统的性能提高,(b)通过强化进行优化,(c)通过中心-环绕动力学来实现,以及(d)以牺牲召回精度为代价增加有效存储容量。在一项经典工作记忆任务的变体上,人类的表现表现出了性能优势、精度降低、项目间依赖关系以及通过中心-环绕分块进行的试验间行为调整。包含中心-环绕分块的模型为我们的研究以及元分析数据集提供了对人类表现的更好的定量描述,并且个体之间的工作记忆容量明显差异归因于分块实施的个体差异。我们的结果揭示了工作记忆电路中中心-环绕连接的规范性推理,呼吁重新评估以前归因于容量差异的记忆表现差异,并支持对视觉工作记忆容量限制的更细致的看法:通过分块在存储容量和记忆精度之间进行战略权衡,有助于灵活的容量限制,包括离散和连续方面。