A Network of Biologically Inspired Rectified Spectral Units (ReSUs) Learns Hierarchical Features Without Error Backpropagation

Authors

  • Shanshan Qin Flatiron Institute
  • Joshua L. Pughe-Sanford Flatiron Institute
  • Alexander Genkin Flatiron Institute
  • Pembe Gizem Ozdil Flatiron Institute EPFL
  • Philip Greengard Flatiron Institute
  • Anirvan M. Sengupta Rutgers University Flatiron Institute
  • Dmitri Chklovskii Flatiron Institute NYU Langone Medical Center

DOI:

https://doi.org/10.1609/aaai.v40i3.37183

Abstract

We introduce a biologically inspired, multilayer neural architecture composed of Rectified Spectral Units (ReSUs). Each ReSU projects a recent window of its input history onto a canonical direction obtained via canonical correlation analysis (CCA) of previously observed past–future input pairs, and then rectifies either its positive or negative component. By encoding canonical directions in synaptic weights and temporal filters, ReSUs implement a local, self-supervised algorithm for progressively constructing increasingly complex features. To evaluate both computational power and biological fidelity, we trained a two-layer ReSU network in a self-supervised regime on translating natural scenes. First-layer units, each driven by a single pixel, developed temporal filters resembling those of Drosophila post-photoreceptor neurons (L1/L2 and L3), including their empirically observed adaptation to signal-to-noise ratio (SNR). Second-layer units, which pooled spatially over the first layer, became direction-selective—analogous to T4 motion-detecting cells—with learned synaptic weight patterns approximating those derived from connectomic reconstructions. Together, these results suggest that ReSUs offer (i) a principled framework for modeling sensory circuits and (ii) a biologically grounded, backpropagation-free paradigm for constructing deep self-supervised neural networks.

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Published

2026-03-14

How to Cite

Qin, S., Pughe-Sanford, J. L., Genkin, A., Ozdil, P. G., Greengard, P., Sengupta, A. M., & Chklovskii, D. (2026). A Network of Biologically Inspired Rectified Spectral Units (ReSUs) Learns Hierarchical Features Without Error Backpropagation. Proceedings of the AAAI Conference on Artificial Intelligence, 40(3), 2019–2028. https://doi.org/10.1609/aaai.v40i3.37183

Issue

Section

AAAI Technical Track on Cognitive Modeling & Cognitive Systems