Publication | Open Access
Non-Ergodic Convergence Analysis of Heavy-Ball Algorithms
39
Citations
16
References
2019
Year
Mathematical ProgrammingConstant Step SizeLarge-scale Global OptimizationEngineeringStochastic OptimizationStep SizeHeavy-ball AlgorithmConvex OptimizationDistributed Constraint OptimizationConvergence AnalysisComputational ComplexityApproximation MethodComputer ScienceStochastic GeometryApproximation TheoryNon-ergodic Convergence Analysis
In this paper, we revisit the convergence of the Heavy-ball method, and present improved convergence complexity results in the convex setting. We provide the first non-ergodic O(1/k) rate result of the Heavy-ball algorithm with constant step size for coercive objective functions. For objective functions satisfying a relaxed strongly convex condition, the linear convergence is established under weaker assumptions on the step size and inertial parameter than made in the existing literature. We extend our results to multi-block version of the algorithm with both the cyclic and stochastic update rules. In addition, our results can also be extended to decentralized optimization, where the ergodic analysis is not applicable.
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