Branched Latent Neural Maps
Matteo Salvador, Alison Lesley Marsden

TL;DR
Branched Latent Neural Maps (BLNMs) are a novel neural network architecture designed to efficiently model complex physical processes, offering excellent generalization, reduced parameters, and rapid simulation capabilities, demonstrated on cardiac electrophysiology data.
Contribution
This paper introduces BLNMs, a new neural network structure that disentangles input roles, enhances dynamics, and achieves fast, accurate simulations with fewer parameters for complex physical models.
Findings
BLNMs generalize well with small datasets and short training times.
They enable 5000x faster real-time simulations of cardiac electrophysiology.
BLNMs require significantly fewer parameters and training time compared to traditional models.
Abstract
We introduce Branched Latent Neural Maps (BLNMs) to learn finite dimensional input-output maps encoding complex physical processes. A BLNM is defined by a simple and compact feedforward partially-connected neural network that structurally disentangles inputs with different intrinsic roles, such as the time variable from model parameters of a differential equation, while transferring them into a generic field of interest. BLNMs leverage latent outputs to enhance the learned dynamics and break the curse of dimensionality by showing excellent generalization properties with small training datasets and short training times on a single processor. Indeed, their generalization error remains comparable regardless of the adopted discretization during the testing phase. Moreover, the partial connections significantly reduce the number of tunable parameters. We show the capabilities of BLNMs in a…
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Taxonomy
TopicsBlind Source Separation Techniques · EEG and Brain-Computer Interfaces · Neural Networks and Applications
