Optimization, Discrete Mathematics and Applications to Data Sciences
Edited by Ashkan Nikeghbali (),
Panos M. Pardalos () and
Michael Th. Rassias ()
in Springer Optimization and Its Applications from Springer, currently edited by Pardalos, Panos, Thai, My T. and Du, Ding-Zhu
Date: 2025
ISBN: 978-3-031-78369-2
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Chapters in this book:
- On the Morphism 1 → 121 $$1 \to 121$$, 2 → 12221 $$2 \to 12221$$
- Jean-Paul Allouche
- Polynomials and Combinatorial Identities
- Horst Alzer
- Rainbow Greedy Matching Algorithms
- Patrick Bennett, Colin Cooper and Alan Frieze
- Predictive Models of Non-Performing Loans: The Case of Greece
- A. Donatou, M. Stefanakos, K. Pappas and J. Leventides
- The Cost of Detection in Interaction Testing
- Ryan E. Dougherty
- On the Study of Cycle Chains Representing Non-reversible Markov Chains Associated with Random Walks with Jumps in Fixed Environments
- Chrysoula Ganatsiou, Ilias K. Savvas and Apostolos Xenakis
- Applying Distance Measures for Discrete Data
- Christos Kitsos and Stavros Fatouros
- Demand Aggregation and Mid-Term Energy Planning Problem on the Business Layer
- Maria Livada, Evangelos Melas and Nick C. Poulios
- Factor Fitting, Rank Allocation, and Partitioning in Multilevel Low Rank Matrices
- Tetiana Parshakova, Trevor Hastie, Eric Darve and Stephen Boyd
- A Code-Based Watermarking Scheme for the Protection of Authenticity of Medical Images
- Iosif Polenakis, Vasileios Vouronikos, Nikolaos Vouronikos, Maria Chroni and Stavros D. Nikolopoulos
- The Minimum Cost Energy Flow Problem Under Demand Uncertainty. Effect on Optimal Solution, Variability, Worst- and Best-Case Scenarios
- Nick C. Poulios, Evangelos Melas and Maria Livada
- A Mathematical Study of the Braess’s Paradox Within a Network Comprising Four Nodes, Five Edges, and Linear Time Functions
- Costas Poulios, Evangelos Melas, Nick C. Poulios, Maria Livada and John Leventides
- On Similiarities Between Two Global Optimization Algorithms Based on Different (Bayesian and Lipschitzian) Approaches
- Antanas Žilinskas
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Persistent link: https://EconPapers.repec.org/RePEc:spr:spopap:978-3-031-78369-2
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DOI: 10.1007/978-3-031-78369-2
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