Publication | Open Access
Global optimality of local search for low rank matrix recovery
140
Citations
21
References
2016
Year
Mathematical ProgrammingNumerical AnalysisEngineeringMachine LearningRandom InitializationSpurious Local MinimaRegularization (Mathematics)Combinatorial OptimizationApproximation TheoryLow-rank ApproximationGlobal OptimalityInverse ProblemsComputer ScienceLocal MinimaSparse RepresentationMatrix FactorizationLocal Search (Optimization)Compressive SensingIterated Local Search
We show that there are no spurious local minima in the non-convex factorized parametrization of low-rank matrix recovery from incoherent linear measurements. With noisy measurements we show all local minima are very close to a global optimum. Together with a curvature bound at saddle points, this yields a polynomial time global convergence guarantee for stochastic gradient descent from random initialization.
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