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Agnostic Physics-Driven Deep Learning
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Agnostic Physics-Driven Deep Learning
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This work establishes that a physical system can perform statistical learning without gradient computations, via an Agnostic Equilibrium Propagation (Aeqprop) procedure that combines energy minimization, homeostatic control, and nudging towards the correct response. In Aeqprop, the specifics of the system do not have to be known: the procedure is based only on external manipulations, and produces a stochastic gradient descent without explicit gradient computations. Thanks to nudging, the system performs a true, order-one gradient step for each training sample, in contrast with order-zero methods like reinforcement or evolutionary strategies, which rely on trial and error. This procedure considerably widens the range of potential hardware for statistical learning to any system with enough controllable parameters, even if the details of the system are poorly known. Aeqprop also establishes that in natural (bio)physical systems, genuine gradient-based statistical learning may result from generic, relatively simple mechanisms, without backpropagation and its requirement for analytic knowledge of partial derivatives.
Forward citations
Cited by 3 Pith papers
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Hybridizing Equilibrium Propagation with Ising Machines for Efficient Energy-Based Learning
Introduces Ising-dynamics-inspired equilibrium propagation with extended phase-space dynamics to lower energy barriers and train deep convolutional Hopfield networks on MNIST, FashionMNIST, and CIFAR-10 at backpropaga...
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Training a Predictive Coding Network on ImageNet using Equilibrium Propagation
A VGG10 predictive coding network is trained on ImageNet via equilibrium propagation to 13.23% top-5 error, close to the 12.2% backpropagation baseline, marking the first such demonstration at this scale.
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Optical Implementation of Equilibrium Propagation Using Spatial Photonic Ising Machines
Hybrid optical implementation of equilibrium propagation via spatial photonic Ising machine demonstrated on Wine classification with numerical MNIST evaluation.
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