Marvels and pitfalls of the Langevin algorithm in noisy high-dimensional inference

Gradient-descent-based algorithms and their stochastic versions have widespread applications in machine learning and statistical inference. In this work, we carry out an analytic study of the performance of the algorithm most commonly considered in physics, the Langevin algorithm, in the context of...

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Detalhes bibliográficos
Principais autores: Sarao Mannelli, S, Biroli, G, Cammarota, C, Krzakala, F, Urbani, P, Zdeborová, L
Formato: Journal article
Idioma:English
Publicado em: American Physical Society 2020