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Titlebook: Learning and Intelligent Optimization; 13th International C Nikolaos F. Matsatsinis,Yannis Marinakis,Panos Par Conference proceedings 2020

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书目名称Learning and Intelligent Optimization
副标题13th International C
编辑Nikolaos F. Matsatsinis,Yannis Marinakis,Panos Par
视频video
丛书名称Lecture Notes in Computer Science
图书封面Titlebook: Learning and Intelligent Optimization; 13th International C Nikolaos F. Matsatsinis,Yannis Marinakis,Panos Par Conference proceedings 2020
描述This book constitutes the thoroughly refereed pChania, Crete, Greece, in May 2019. .The 38 full papers presented have beencarefully reviewed and selected from 52 submissions. The papers focus on advancedresearch developments in such interconnected fields as mathematical programming, global optimization, machine learning, and artificial intelligence and describe advanced ideas, technologies, methods, and applications in optimization and machine learning..
出版日期Conference proceedings 2020
关键词artificial intelligence; combinatorial optimization; communication systems; computer networks; computer
版次1
doihttps://doi.org/10.1007/978-3-030-38629-0
isbn_softcover978-3-030-38628-3
isbn_ebook978-3-030-38629-0Series ISSN 0302-9743 Series E-ISSN 1611-3349
issn_series 0302-9743
copyrightSpringer Nature Switzerland AG 2020
The information of publication is updating

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Towards Improving Merging Heuristics for Binary Decision Diagrams, multigraphs and represent the solution space of binary optimization problems in a recursive way. During their construction, merging of nodes in this multigraph is applied to keep the size within polynomial bounds resulting in a discrete relaxation of the original problem. The longest path length th
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On Polynomial Solvability of One Quadratic Euclidean Clustering Problem on a Line,racluster sums of the squared distances between clusters elements and their centers. The centers of some clusters are given as an input, while the other centers are unknown and defined as centroids (geometrical centers). It is known that the general case of the problem is strongly NP-hard. We show t
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A Hessian Free Neural Networks Training Algorithm with Curvature Scaled Adaptive Momentum, (HF-CSAM). The algorithm’s weight update rule is similar to SGD with momentum but with two main differences arising from the formulation of the training task as a constrained optimization problem: (i) the momentum term is scaled with curvature information (in the form of the Hessian); (ii) the coef
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Irreducible Bin Packing: Complexity, Solvability and Application to the Routing Open Shop,f any two bins is larger than the bin capacity. There is a trivial upper bound on the optimum in terms of the total size of the items. We refer to the decision version of this problem with the number of bins equal to the trivial upper bound as Irreducible Bin Packing. We prove that this problem is N
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Learning Probabilistic Constraints for Surgery Scheduling Using a Support Vector Machine,od for tackling probabilistic constraints using machine learning. The technique is inspired by models that use slacks in capacity planning. Essentially support vector classification is used to learn a linear constraint that will replace the probabilistic constraint. The data used to learn this const
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