Chatterji, N.S.Flammarion, NicolasMa, Yi-AnBartlett, P.L.Jordan, Michael I.2019-12-022019-12-022019-12-022018https://infoscience.epfl.ch/handle/20.500.14299/163506We show that accelerated gradient descent, averaged gradient descent and the heavy-ball method for quadratic non-strongly-convex problems may be reformulated as constant parameter secondorder difference equation algorithms, where stability of the system is equivalent to convergence at rate O(1/n2), where n is the number of iterations. We provide a detailed analysis of the eigenvalues of the corresponding linear dynamical system, showing various oscillatory and non-oscillatory behaviors, together with a sharp stability result with explicit constants. We also consider the situation where noisy gradients are available, where we extend our general convergence result, which suggests an alternative algorithm (i.e., with different step sizes) that exhibits the good aspects of both averaging and acceleration.On the theory of variance reduction for stochastic gradient monte carlotext::conference output::conference proceedings::conference paper