Exploring the Dimensions of a Variational Neuron
arXiv cs.LG / 3/17/2026
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Key Points
- The paper introduces EVE (Elemental Variational Expanse), a variational distributional neuron with an explicit prior, an amortized posterior, and unit-level variational regularization.
- It relocates probabilistic structure to the neuron level, enabling the neuron to be locally observable and controllable rather than relying on global latent variables.
- The study explores how changing the neuron's latent dimensionality k (from 1 to higher dimensions) interacts with local capacity control and a neuron-level autoregressive extension, supported by diagnostics like effective KL and drift indicators.
- Across forecasting and tabular tasks, the work shows some neuron-level variables are measurable and predictive of downstream behavior, offering an initial map of the design space for variational neurons.
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