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.




