Cell
Volume 183, Issue 4, 12 November 2020, Pages 954-967.e21
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Article
The Geometry of Abstraction in the Hippocampus and Prefrontal Cortex

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Highlights

  • The geometry of abstraction supports generalization

  • Hippocampal and PFC representations are simultaneously abstract and high dimensional

  • Multiple task-relevant variables are represented in an abstract format

  • Representations in simulated neural networks are similar to recorded ones

Summary

The curse of dimensionality plagues models of reinforcement learning and decision making. The process of abstraction solves this by constructing variables describing features shared by different instances, reducing dimensionality and enabling generalization in novel situations. Here, we characterized neural representations in monkeys performing a task described by different hidden and explicit variables. Abstraction was defined operationally using the generalization performance of neural decoders across task conditions not used for training, which requires a particular geometry of neural representations. Neural ensembles in prefrontal cortex, hippocampus, and simulated neural networks simultaneously represented multiple variables in a geometry reflecting abstraction but that still allowed a linear classifier to decode a large number of other variables (high shattering dimensionality). Furthermore, this geometry changed in relation to task events and performance. These findings elucidate how the brain and artificial systems represent variables in an abstract format while preserving the advantages conferred by high shattering dimensionality.

Keywords

abstraction
factorized representations
disentangled representations
prefrontal cortex
hippocampus
anterior cingulate cortex
dimensionality
artificial neural networks
representational geometry
mixed selectivity

Cited by (0)

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These authors contributed equally

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Senior author

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Present address: Sorbonne Université, Institut du Cerveau - Paris Brain Institute - ICM, Inserm, CNRS, APHP, Paris, France

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Lead Contact