Sampling-based probabilistic inference emerges from learning in neural circuits with a cost on reliability
Laurence Aitchison, Guillaume Hennequin, Mate Lengyel

TL;DR
This paper demonstrates that neural networks trained with a reliability cost develop sampling-based probabilistic representations, linking neural variability to Bayesian inference and explaining sensory neural responses.
Contribution
It introduces a reliability-based learning framework where neural variability encodes samples from posterior distributions, connecting biological plausibility with probabilistic computation.
Findings
Neural networks develop probabilistic sampling representations due to reliability costs.
Sampling-based representations emerge across different network architectures.
The approach connects neural variability with Bayesian inference strategies like variational autoencoders.
Abstract
Neural responses in the cortex change over time both systematically, due to ongoing plasticity and learning, and seemingly randomly, due to various sources of noise and variability. Most previous work considered each of these processes, learning and variability, in isolation -- here we study neural networks exhibiting both and show that their interaction leads to the emergence of powerful computational properties. We trained neural networks on classical unsupervised learning tasks, in which the objective was to represent their inputs in an efficient, easily decodable form, with an additional cost for neural reliability which we derived from basic biophysical considerations. This cost on reliability introduced a tradeoff between energetically cheap but inaccurate representations and energetically costly but accurate ones. Despite the learning tasks being non-probabilistic, the networks…
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Taxonomy
TopicsNeural dynamics and brain function · Neural Networks and Applications · Advanced Memory and Neural Computing
