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Conférence | Cerveau


NeuroSpin Conferences

Rarely categorical, highly separable neural representations along the cortical hierarchy

Du 13/04/2026 au 13/04/2026
NeuroSpin amphitheater + Zoom

​​​​​​​Talk from Lorenzo Posani – ICM Institut du cerveau

A​bstract:​

A long-standing debate in neuroscience concerns whether individual neurons are organized into functionally distinct populations that encode information differently ("categorical" representations) and the implications for neural computation. Here, we systematically analyzed how cortical neurons encode cognitive, sensory, and movement variables across 43 cortical regions during a complex task (14,000+ units from the International Brain Laboratory public Brainwide Map data set) and studied how these properties change across the sensory-cognitive cortical hierarchy. We found that the structure of the neural code was scale-dependent: on a whole-cortex scale, neural selectivity was categorical and organized across regions in a way that reflected their anatomical connectivity. However, within individual regions, categorical representations were rare and limited to primary sensory areas, and neuronal responses were instead very diverse. With theoretical arguments and empirical evidence, we demonstrate that the diversity of neural responses enables high-dimensional representations and, hence, high separability, allowing linear readouts to separate experimental conditions in many arbitrary ways.
Indeed, when accounting for information that is actually encoded in each area, all cortical regions exhibit maximal separability. Our results indicate that cortical circuits prioritize diversity over categorical structure, supporting a computational regime geared toward high-dimensional, highly-separable neural representations.​

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