A learning framework for winner-take-all networks with stochastic synapses
Hesham Mostafa, Gert Cauwenberghs

TL;DR
This paper introduces a biologically inspired learning framework for winner-take-all neural networks with stochastic synapses, enabling probabilistic modeling and learning in networks with realistic neural noise.
Contribution
It presents a novel variational learning approach for winner-take-all networks with stochastic synapses, bridging biological plausibility and modern generative modeling.
Findings
Effective generative modeling with biological neural noise
Successful structured output prediction using the proposed networks
Demonstrated semi-supervised learning capabilities
Abstract
Many recent generative models make use of neural networks to transform the probability distribution of a simple low-dimensional noise process into the complex distribution of the data. This raises the question of whether biological networks operate along similar principles to implement a probabilistic model of the environment through transformations of intrinsic noise processes. The intrinsic neural and synaptic noise processes in biological networks, however, are quite different from the noise processes used in current abstract generative networks. This, together with the discrete nature of spikes and local circuit interactions among the neurons, raises several difficulties when using recent generative modeling frameworks to train biologically motivated models. In this paper, we show that a biologically motivated model based on multi-layer winner-take-all (WTA) circuits and stochastic…
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