 Cham, Switzerland : Springer, [2023]
 Description
 Book — 1 online resource (xxxv, 422 pages) : illustrations
 Summary

 Preface and Book of Abstracts
 Chapter. 1. Optimal Layered Defense for Site Protection
 Chapter. 2. SARAHbased Variancereduced Algorithm for Stochastic Finitesum Cocoercive Variational Inequalities
 Chapter. 3. Dimensionality reduction using pseudoBoolean polynomials for cluster analysis
 Chapter. 4. PseudoBoolean polynomials approach to edge detection and image segmentation
 Chapter. 5. Purifying Data by Machine Learning with Certainty Levels
 Chapter. 6. On impact of data models on predictability assessment of time series
 Chapter. 7. A threestep method for audience extension in Internet advertising using an industrial taxonomy
 Chapter. 8. From Prebase in Automata Theory to Data Analysis: Boris Mirkin's Way
 Chapter. 9. Manipulability of aggregation procedures for the case of large numbers of voters
 Chapter. 10. Preferences over mixed manna
 Chapter. 11. About Some Clustering Algorithms in Evidence Theory
 Chapter. 12. Inferring Multiple Consensus Trees and Supertrees Using Clustering: A Review
 Chapter. 13. Anomaly Detection With Neural Network Using a Generator
 Chapter. 14. Controllability of triangular systems with phase space change
 Chapter. 15. A Parallel Linear Active Set Method
 Chapter. 16. Mean Values: A Multicriterial Analysis
 Chapter. 17. Data and Text Interpretation in Social Media: Urban Planning Conflicts
 Chapter. 18. Visual Explainable Machine Learning for HighStake DecisionMaking with Worst Case Estimates
 Chapter. 19. Algorithm of trading on the stock market, providing satisfactory results
 Chapter. 20. Classification using Marginalized Maximum Likelihood Estimation and BlackBox Variational Inference
 Chapter. 21. Generating Genomic Maps of ZDNA with the Transformer Algorithm
 Chapter. 22. Manipulation by Coalitions in Voting with Incomplete Information
 Chapter. 23. Rethinking Probabilistic Topic Modeling from the Point of View of Classical NonBayesian Regularization.
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