A descent algorithm for nonsmooth convex optimization |
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Authors: | Masao Fukushima |
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Affiliation: | (1) Department of Applied Mathematics and Physics, Faculty of Engineering, Kyoto University, 606 Kyoto, Japan |
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Abstract: | This paper presents a new descent algorithm for minimizing a convex function which is not necessarily differentiable. The algorithm can be implemented and may be considered a modification of the ε-subgradient algorithm and Lemarechal's descent algorithm. Also our algorithm is seen to be closely related to the proximal point algorithm applied to convex minimization problems. A convergence theorem for the algorithm is established under the assumption that the objective function is bounded from below. Limited computational experience with the algorithm is also reported. |
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Keywords: | Nonsmooth Optimization Subgradient ε -Subdifferential Descent Method Cutting Planes |
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