How 'Neural' is a Neural Foundation Model?
Johannes Bertram, Luciano Dyballa, Anderson Keller, Savik Kinger, Steven W. Zucker

TL;DR
This paper investigates the internal neural representations of a state-of-the-art foundation model of neural activity, analyzing its processing stages and proposing design improvements for biological plausibility.
Contribution
It introduces a novel analysis method to interpret the internal neurons of a neural foundation model in biological terms, revealing differences across processing stages.
Findings
Recurrent modules enhance stimulus pattern separation.
Different model stages show distinct representational structures.
Proposed design changes could improve biological alignment.
Abstract
Foundation models have shown remarkable success in fitting biological visual systems; however, their black-box nature inherently limits their utility for understanding brain function. Here, we peek inside a SOTA foundation model of neural activity (Wang et al., 2025) as a physiologist might, characterizing each 'neuron' based on its temporal response properties to parametric stimuli. We analyze how different stimuli are represented in neural activity space by building decoding manifolds, and we analyze how different neurons are represented in stimulus-response space by building neural encoding manifolds. We find that the different processing stages of the model (i.e., the feedforward encoder, recurrent, and readout modules) each exhibit qualitatively different representational structures in these manifolds. The recurrent module shows a jump in capabilities over the encoder module by…
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Taxonomy
TopicsNeural dynamics and brain function · Visual perception and processing mechanisms · Neurobiology and Insect Physiology Research
