Context-dependent manifold learning: A neuromodulated constrained autoencoder approach
J\'er\^ome Adriaens (1), Gustave Bainier (1), Guillaume Drion (1), Pierre Sacr\'e (1) ((1) Neuroengineering Lab, Department of Electrical Engineering, Computer Science, University of Li\`ege)

TL;DR
This paper introduces the NcAE, a novel autoencoder that maintains manifold topology and idempotency across varying external contexts, ensuring stable and consistent representations in physical systems.
Contribution
The paper develops the NcAE, a neuromodulated constrained autoencoder that guarantees topology invariance and smooth manifold changes under context variation, with theoretical proof and empirical validation.
Findings
NcAE preserves manifold topology across contexts.
Outperforms six baselines in reconstruction and geometry metrics.
Ensures geometric consistency in physical systems.
Abstract
Many physical systems exhibit a low-dimensional structure that varies with external parameters: link lengths in a robot, forcing constants in a fluid, or Reynolds numbers in a flow shift the underlying manifold while preserving its intrinsic dimension. Constrained AutoEncoders (cAEs) learn such manifolds through an idempotent encoder-decoder projection, a property that unconstrained autoencoders cannot match and that is essential whenever the model is applied iteratively. However, the standard strategies for making a cAE context-dependent, namely concatenating the context to the input or affinely modulating hidden activations, break the encoder-decoder idempotency, sacrificing the projection guarantee precisely in the setting where it would be most valuable. To restore this guarantee under context variation, we developed the Neuromodulated Constrained Autoencoder (NcAE), which modulates…
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Taxonomy
TopicsModel Reduction and Neural Networks · Generative Adversarial Networks and Image Synthesis · 3D Shape Modeling and Analysis
