Homotopy Theoretic and Categorical Models of Neural Information Networks
Creators
Abstract
In this paper we develop a novel mathematical formalism for the modeling of neural information networks endowed with additional structure in the form of assignments of resources, either computational or metabolic or informational. The starting point for this construction is the notion of summing functors and of Segal's Gamma-spaces in homotopy theory. The main results in this paper include functorial assignments of concurrent/distributed computing architectures and associated binary codes to networks and their subsystems, a categorical form of the Hopfield network dynamics, which recovers the usual Hopfield equations when applied to a suitable category of weighted codes, a functorial assignment to networks of corresponding information structures and information cohomology, and a cohomological version of integrated information.
Copyright and License
© 2024.
Funding
Partially supported by NSF grants DMS-1707882 and DMS-2104330, by NSERC Discovery Grant RGPIN-2018-04937 and Accelerator Supplement grant RGPAS-2018-522593, and by FQXi grants FQXi-RFP-1 804 and FQXi-RFP-CPW-2014, SVCF grant 2020-2240.
Files
2006.15136.pdf
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Additional details
Related works
- Is new version of
- Discussion Paper: arXiv:2006.15136 (arXiv)
Funding
- National Science Foundation
- DMS-1707882
- National Science Foundation
- DMS-2104330
- Natural Sciences and Engineering Research Council of Canada (NSERC)
- RGPIN-2018-04937
- Natural Sciences and Engineering Research Council of Canada (NSERC)
- RGPAS-2018-522593
- Foundational Questions Institute
- FQXi-RFP-1 804
- Foundational Questions Institute
- FQXi-RFP-CPW-2014
Dates
- Accepted
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2023-08-20