Search Results - Surrogate sub-gradient algorithm
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Supply chain networks design with multi-mode demand satisfaction policy
ISSN: 0360-8352, 1879-0550Published: New York Elsevier Ltd 01.06.2016Published in Computers & industrial engineering (01.06.2016)“…•This paper deals with a supply chain network design with multi-mode demand.•The problem is mathematically formulated as mixed integer linear programming.•A…”
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Journal Article -
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Parsimonious shooting heuristic for trajectory design of connected automated traffic part II: Computational issues and optimization
ISSN: 0191-2615, 1879-2367Published: Oxford Elsevier Ltd 01.01.2017Published in Transportation research. Part B: methodological (01.01.2017)“…) proposed a parsimonious shooting heuristic (SH) algorithm for constructing feasible trajectories for a stream of vehicles considering realistic constraints including…”
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Journal Article -
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A new envelope function for nonsmooth DC optimization
ISSN: 2576-2370Published: IEEE 14.12.2020Published in Proceedings of the IEEE Conference on Decision & Control (14.12.2020)“…". A gradient method on this surrogate function yields a novel (sub)gradient-free proximal algorithm which is inherently parallelizable and can handle fully nonsmooth formulations…”
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Conference Proceeding -
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A Fast and Efficient Data Association of Passive Sensor Tracking
ISBN: 9781424472796, 1424472792Published: IEEE 01.05.2010Published in 2010 International Conference on Intelligent Computation Technology and Automation (01.05.2010)“… The sub gradient is applied to update the Lagrange multipliers, but it needs to minimize all the sub problems at every iterative time to solve the dual solution in the classic algorithm…”
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Conference Proceeding -
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A new envelope function for nonsmooth DC optimization
ISSN: 2331-8422Published: Ithaca Cornell University Library, arXiv.org 31.03.2020Published in arXiv.org (31.03.2020)“…". A gradient method on this surrogate function yields a novel (sub)gradient-free proximal algorithm which is inherently parallelizable and can handle fully nonsmooth formulations…”
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Large-margin classification with multiple decision rules
ISSN: 1932-1864, 1932-1872Published: Hoboken Wiley Subscription Services, Inc., A Wiley Company 01.04.2016Published in Statistical analysis and data mining (01.04.2016)“…Binary classification is a common statistical learning problem in which a model is estimated on a set of covariates for some outcome, indicating the membership…”
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Journal Article -
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Zeroth-order Proximal Clipped Gradient Method with Shifts for Distributed Stochastic Composite Optimization Problems with Infinite Variance
ISSN: 0885-7474, 1573-7691Published: New York Springer Nature B.V 01.11.2025Published in Journal of scientific computing (01.11.2025)“…-)gradient information may be unavailable. We present a mini-batch zeroth-order proximal clipped gradient algorithm with shifts, which utilizes the well-known Gaussian smoothing technique to yield unbiased zeroth-order gradient estimators…”
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Journal Article -
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Zeroth-order Proximal Clipped Gradient Method with Shifts for Distributed Stochastic Composite Optimization Problems with Infinite Variance: Zeroth-order Proximal Clipped Gradient Method with
ISSN: 0885-7474, 1573-7691Published: New York Springer US 22.09.2025Published in Journal of scientific computing (22.09.2025)“…-)gradient information may be unavailable. We present a mini-batch zeroth-order proximal clipped gradient algorithm with shifts, which utilizes the well-known Gaussian smoothing technique to yield unbiased zeroth-order gradient estimators…”
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Journal Article -
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Large-Margin Classification with Multiple Decision Rules
ISSN: 2331-8422Published: Ithaca Cornell University Library, arXiv.org 19.11.2014Published in arXiv.org (19.11.2014)“…Binary classification is a common statistical learning problem in which a model is estimated on a set of covariates for some outcome indicating the membership…”
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Paper -
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Optimization methods for regularized convex formulations in machine learning
ISBN: 9781267055095, 126705509XPublished: ProQuest Dissertations & Theses 01.01.2011“…We develop efficient numerical optimization algorithms for regularized convex formulations that appear in a variety of areas such as machine learning, statistics, and signal processing…”
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Dissertation -
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A Zeroth-order Proximal Stochastic Gradient Method for Weakly Convex Stochastic Optimization
ISSN: 2331-8422Published: Ithaca Cornell University Library, arXiv.org 07.11.2022Published in arXiv.org (07.11.2022)“… We consider nonsmooth and nonlinear stochastic composite problems, for which (sub-)gradient information might be unavailable…”
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