Modern neuroscience has evolved into a frontier field that draws on numerous disciplines, resulting in the flourishing of novel conceptual frames primarily inspired by physics and complex systems science. Contributing in this direction, we recently introduced a mathematical framework to describe the spatiotemporal interactions of systems of neurons using lattice field theory, the reference paradigm for theoretical particle physics. In this note, we provide a concise summary of the basics of the theory, aiming to be intuitive to the interdisciplinary neuroscience community. We contextualize our methods, illustrating how to readily connect the parameters of our formulation to experimental variables using well-known renormalization procedures. This synopsis yields the key concepts needed to describe neural networks using lattice physics. Such classes of methods are attention-worthy in an era of blistering improvements in numerical computations, as they can facilitate relating the observation of neural activity to generative models underpinned by physical principles.

Lattice physics approaches for neural networks / Bardella, G.; Franchini, S.; Pani, P.; Ferraina, S.. - In: ISCIENCE. - ISSN 2589-0042. - 27:12(2024). [10.1016/j.isci.2024.111390]

Lattice physics approaches for neural networks

Bardella G.
Primo
Conceptualization
;
2024

Abstract

Modern neuroscience has evolved into a frontier field that draws on numerous disciplines, resulting in the flourishing of novel conceptual frames primarily inspired by physics and complex systems science. Contributing in this direction, we recently introduced a mathematical framework to describe the spatiotemporal interactions of systems of neurons using lattice field theory, the reference paradigm for theoretical particle physics. In this note, we provide a concise summary of the basics of the theory, aiming to be intuitive to the interdisciplinary neuroscience community. We contextualize our methods, illustrating how to readily connect the parameters of our formulation to experimental variables using well-known renormalization procedures. This synopsis yields the key concepts needed to describe neural networks using lattice physics. Such classes of methods are attention-worthy in an era of blistering improvements in numerical computations, as they can facilitate relating the observation of neural activity to generative models underpinned by physical principles.
2024
Computing methodology; Mathematical method in physics; Neuroscience
01 Pubblicazione su rivista::01a Articolo in rivista
Lattice physics approaches for neural networks / Bardella, G.; Franchini, S.; Pani, P.; Ferraina, S.. - In: ISCIENCE. - ISSN 2589-0042. - 27:12(2024). [10.1016/j.isci.2024.111390]
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Utilizza questo identificativo per citare o creare un link a questo documento: https://hdl.handle.net/11573/1730418
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