Saved in:
Bibliographic Details
Main Authors: Erb, Laura, Boccato, Tommaso, Vasilache, Alexandru, Becker, Juergen, Toschi, Nicola
Format: Preprint
Published: 2025
Subjects:
Online Access:https://arxiv.org/abs/2506.13410
Tags: Add Tag
No Tags, Be the first to tag this record!
_version_ 1866908408851988480
author Erb, Laura
Boccato, Tommaso
Vasilache, Alexandru
Becker, Juergen
Toschi, Nicola
author_facet Erb, Laura
Boccato, Tommaso
Vasilache, Alexandru
Becker, Juergen
Toschi, Nicola
contents The high computational complexity and increasing parameter counts of deep neural networks pose significant challenges for deployment in resource-constrained environments, such as edge devices or real-time systems. To address this, we propose a parameter-efficient neural architecture where neurons are embedded in Euclidean space. During training, their positions are optimized and synaptic weights are determined as the inverse of the spatial distance between connected neurons. These distance-dependent wiring rules replace traditional learnable weight matrices and significantly reduce the number of parameters while introducing a biologically inspired inductive bias: connection strength decreases with spatial distance, reflecting the brain's embedding in three-dimensional space where connections tend to minimize wiring length. We validate this approach for both multi-layer perceptrons and spiking neural networks. Through a series of experiments, we demonstrate that these spatially embedded neural networks achieve a performance competitive with conventional architectures on the MNIST dataset. Additionally, the models maintain performance even at pruning rates exceeding 80% sparsity, outperforming traditional networks with the same number of parameters under similar conditions. Finally, the spatial embedding framework offers an intuitive visualization of the network structure.
format Preprint
id arxiv_https___arxiv_org_abs_2506_13410
institution arXiv
publishDate 2025
record_format arxiv
spellingShingle Training Neural Networks by Optimizing Neuron Positions
Erb, Laura
Boccato, Tommaso
Vasilache, Alexandru
Becker, Juergen
Toschi, Nicola
Machine Learning
The high computational complexity and increasing parameter counts of deep neural networks pose significant challenges for deployment in resource-constrained environments, such as edge devices or real-time systems. To address this, we propose a parameter-efficient neural architecture where neurons are embedded in Euclidean space. During training, their positions are optimized and synaptic weights are determined as the inverse of the spatial distance between connected neurons. These distance-dependent wiring rules replace traditional learnable weight matrices and significantly reduce the number of parameters while introducing a biologically inspired inductive bias: connection strength decreases with spatial distance, reflecting the brain's embedding in three-dimensional space where connections tend to minimize wiring length. We validate this approach for both multi-layer perceptrons and spiking neural networks. Through a series of experiments, we demonstrate that these spatially embedded neural networks achieve a performance competitive with conventional architectures on the MNIST dataset. Additionally, the models maintain performance even at pruning rates exceeding 80% sparsity, outperforming traditional networks with the same number of parameters under similar conditions. Finally, the spatial embedding framework offers an intuitive visualization of the network structure.
title Training Neural Networks by Optimizing Neuron Positions
topic Machine Learning
url https://arxiv.org/abs/2506.13410