Author:
Kanemura Itsuki,Kitano Katsunori
Abstract
AbstractNetwork structures of the brain have wiring patterns specialized for specific functions. These patterns are partially determined genetically or evolutionarily based on the type of task or stimulus. These wiring patterns are important in information processing; however, their organizational principles are not fully understood. This study frames the maximization of information transmission alongside the reduction of maintenance costs as a multi-objective optimization challenge, utilizing information theory and evolutionary computing algorithms with an emphasis on the visual system. The goal is to understand the underlying principles of circuit formation by exploring the patterns of wiring and information processing. The study demonstrates that efficient information transmission necessitates sparse circuits with internal modular structures featuring distinct wiring patterns. Significant trade-offs underscore the necessity of balance in wiring pattern development. The dynamics of effective circuits exhibit moderate flexibility in response to stimuli, in line with observations from prior visual system studies. Maximizing information transfer may allow for the self-organization of information processing functions similar to actual biological circuits, without being limited by modality. This study offers insights into neuroscience and the potential to improve reservoir computing performance.
Publisher
Springer Science and Business Media LLC
Reference58 articles.
1. Glasser, M. F. et al. A multi-modal parcellation of human cerebral cortex. Nature 536, 171–178 (2016).
2. Rakic, P. Evolution of the neocortex: A perspective from developmental biology. Nat. Rev. Neurosci. 10, 724–735 (2009).
3. Barlow, H. B. Possible principles underlying the transformations of sensory messages. In Sensory Communication (ed. Rosenblith, W. A.) (The MIT Press, 2012).
4. Zador, A. M. A critique of pure learning and what artificial neural networks can learn from animal brains. Nat. Commun. https://doi.org/10.1038/s41467-019-11786-6 (2019).
5. Barabási, D. L., Beynon, T., Katona, Á. & Perez-Nieves, N. Complex computation from developmental priors. Nat. Commun. https://doi.org/10.1038/s41467-023-37980-1 (2023).