Anne-Men Huijzer

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1paper

1 Paper

OCMar 1, 2025
Convergence of energy-based learning in linear resistive networks

Anne-Men Huijzer, Thomas Chaffey, Bart Besselink et al.

Energy-based learning algorithms are alternatives to backpropagation and are well-suited to distributed implementations in analog electronic devices. However, a rigorous theory of convergence is lacking. We make a first step in this direction by analysing a particular energy-based learning algorithm, Contrastive Learning, applied to a network of linear adjustable resistors. It is shown that, in this setup, Contrastive Learning is equivalent to projected gradient descent on a convex function, for any step size, giving a guarantee of convergence for the algorithm.