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Space as Time Through Neuron Position Learning

Published: November 3, 2025 | arXiv ID: 2511.01632v1

By: Balázs Mészáros , James C. Knight , Danyal Akarca and more

Potential Business Impact:

Makes AI learn faster by spacing out its "brain" cells.

Business Areas:
Neuroscience Biotechnology, Science and Engineering

Biological neural networks exist in physical space where distance determines communication delays: a fundamental space-time coupling absent in most artificial neural networks. While recent work has separately explored spatial embeddings and learnable synaptic delays in spiking neural networks, we unify these approaches through a novel neuron position learning algorithm where delays relate to the Euclidean distances between neurons. We derive gradients with respect to neuron positions and demonstrate that this biologically-motivated constraint acts as an inductive bias: networks trained on temporal classification tasks spontaneously self-organize into local, small-world topologies with modular structure emerging under distance-dependent connection costs. Remarkably, we observe unprompted functional specialization aligned with spatial clustering without explictly enforcing it. These findings lay the groundwork for networks in which space and time are intrinsically coupled, offering new avenues for mechanistic interpretability, biologically inspired modelling, and efficient implementations.

Country of Origin
🇬🇧 United Kingdom

Page Count
11 pages

Category
Computer Science:
Neural and Evolutionary Computing