Neuron
Volume 103, Issue 1, 3 July 2019, Pages 147-160.e8
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Article
A Flexible Model of Working Memory

https://doi.org/10.1016/j.neuron.2019.04.020Get rights and content
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Highlights

  • Random recurrent connections can support flexible working memory

  • Overlap of connections causes interference between memories, limiting capacity

  • Model captures many behavioral and physiological characteristics of working memory

  • Structured sensory networks can constrain high-dimensional random representations

Summary

Working memory is fundamental to cognition, allowing one to hold information “in mind.” A defining characteristic of working memory is its flexibility: we can hold anything in mind. However, typical models of working memory rely on finely tuned, content-specific attractors to persistently maintain neural activity and therefore do not allow for the flexibility observed in behavior. Here, we present a flexible model of working memory that maintains representations through random recurrent connections between two layers of neurons: a structured “sensory” layer and a randomly connected, unstructured layer. As the interactions are untuned with respect to the content being stored, the network maintains any arbitrary input. However, in our model, this flexibility comes at a cost: the random connections overlap, leading to interference between representations and limiting the memory capacity of the network. Additionally, our model captures several other key behavioral and neurophysiological characteristics of working memory.

Keywords

working memory
cognitive flexibility
capacity limitations
cognitive control
excitation-inhibition balance
mixed selectivity
computational model

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