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Context-dependent manifold learning: A neuromodulated constrained autoencoder approach

arXiv cs.LG / 3/13/2026

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Key Points

  • The paper introduces the Neuromodulated Constrained Autoencoder (NcAE) to enable context-dependent manifold learning by parameterizing geometric constraints with gain and bias conditioned on static contextual information.
  • It addresses the limitation of standard constrained autoencoders, which misattribute changes in context to the input data.
  • Experimental results on dynamical systems show NcAE accurately captures how manifold geometry varies across regimes while maintaining accurate projection properties.
  • The work demonstrates neuromodulation as a mechanism to decouple global contextual parameters from local representations, enabling more flexible, physics-informed representations under non-stationary environmental constraints.

Abstract

Constrained autoencoders (cAE) provide a successful path towards interpretable dimensionality reduction by enforcing geometric structure on latent spaces. However, standard cAEs cannot adapt to varying physical parameters or environmental conditions without conflating these contextual shifts with the primary input. To address this, we integrated a neuromodulatory mechanism into the cAE framework to allow for context-dependent manifold learning. This paper introduces the Neuromodulated Constrained Autoencoder (NcAE), which adaptively parameterizes geometric constraints via gain and bias tuning conditioned on static contextual information. Experimental results on dynamical systems show that the NcAE accurately captures how manifold geometry varies across different regimes while maintaining rigorous projection properties. These results demonstrate that neuromodulation effectively decouples global contextual parameters from local manifold representations. This architecture provides a foundation for developing more flexible, physics-informed representations in systems subject to (non-stationary) environmental constraints.