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Numerical analysis / Dynamical systems / Classical mechanics / Hamiltonian mechanics / Symplectic integrator / Mathematical optimization / Gradient descent / Leapfrog integration / Bregman Lagrangian / Lagrangian mechanics / Bregman divergence
Date: 2018-07-28 17:09:47
Numerical analysis
Dynamical systems
Classical mechanics
Hamiltonian mechanics
Symplectic integrator
Mathematical optimization
Gradient descent
Leapfrog integration
Bregman Lagrangian
Lagrangian mechanics
Bregman divergence

Dynamical, Symplectic and Stochastic Perspectives on Gradient-Based Optimization Michael I. Jordan University of California, Berkeley March 3, 2018

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