Gradient Methods with Regularization for Constrained Optimization Problems and Their Complexity Estimates
classification
🧮 math.OC
keywords
convergencegradientmethodscomplexityestimatesoptimizationproblemsversions
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We suggest simple implementable modifications of conditional gradient and gradient projection methods for smooth convex optimization problems in Hilbert spaces. Usually, the custom methods attain only weak convergence. We prove strong convergence of the new versions and establish their complexity estimates, which appear similar to the convergence rate of the weakly convergent versions.
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