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      Statistical Mechanics of Deep Learning

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          Abstract

          The recent striking success of deep neural networks in machine learning raises profound questions about the theoretical principles underlying their success. For example, what can such deep networks compute? How can we train them? How does information propagate through them? Why can they generalize? And how can we teach them to imagine? We review recent work in which methods of physical analysis rooted in statistical mechanics have begun to provide conceptual insights into these questions. These insights yield connections between deep learning and diverse physical and mathematical topics, including random landscapes, spin glasses, jamming, dynamical phase transitions, chaos, Riemannian geometry, random matrix theory, free probability, and nonequilibrium statistical mechanics. Indeed, the fields of statistical mechanics and machine learning have long enjoyed a rich history of strongly coupled interactions, and recent advances at the intersection of statistical mechanics and deep learning suggest these interactions will only deepen going forward.

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          Most cited references56

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          Multilayer feedforward networks are universal approximators

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            Statistical Dynamics of Classical Systems

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              A Learning Algorithm for Boltzmann Machines*

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                Author and article information

                Journal
                Annual Review of Condensed Matter Physics
                Annu. Rev. Condens. Matter Phys.
                Annual Reviews
                1947-5454
                1947-5462
                March 10 2020
                March 10 2020
                : 11
                : 1
                : 501-528
                Affiliations
                [1 ]Google Brain, Google Inc., Mountain View, California 94043, USA
                [2 ]Department of Applied Physics, Stanford University, Stanford, California 94035, USA;
                Article
                10.1146/annurev-conmatphys-031119-050745
                eab08ffb-4f66-4533-a4e5-6a7f738e2b8c
                © 2020
                History

                Earth & Environmental sciences,Medicine,Chemistry,Social & Behavioral Sciences,Economics,Life sciences

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