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Tantar A.A. et al. (eds.) EVOLVE - A Bridge between Probability, Set Oriented Numerics, and Evolutionary Computation VI

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Tantar A.A. et al. (eds.) EVOLVE - A Bridge between Probability, Set Oriented Numerics, and Evolutionary Computation VI
New York: Springer, 2018. — 233 p.
This book comprises selected research papers from the 2015 edition of the EVOLVE conference, which was held on June 18–June 24, 2015 in Iași, Romania. It presents the latest research on Probability, Set Oriented Numerics, and Evolutionary Computation. The aim of the EVOLVE conference was to provide a bridge between probability, set oriented numerics and evolutionary computation and to bring together experts from these disciplines. The broad focus of the EVOLVE conference made it possible to discuss the connection between these related fields of study computational science. The selected papers published in the proceedings book were peer reviewed by an international committee of reviewers (at least three reviews per paper) and were revised and enhanced by the authors after the conference. The contributions are categorized into five major parts, which are:
Multicriteria and Set-Oriented Optimization; Evolution in ICT Security; Computational Game Theory; Theory on Evolutionary Computation; Applications of Evolutionary Algorithms.
The 2015 edition shows a major progress in the aim to bring disciplines together and the research on a number of topics that have been discussed in previous editions of the conference matured over time and methods have found their ways in applications. In this sense the book can be considered an important milestone in bridging and thereby advancing state-of-the-art computational methods.
Contents :

Front Matter
Front Matter
Aggregate Selection in Multi-objective Biochemical Optimization via the Average Cuboid Volume Indicator
On Gradient-Based and Swarm-Based Algorithms for Set-Oriented Bicriteria Optimization
Quadcriteria Optimization of Binary Classifiers: Error Rates, Coverage, and Complexity
Parameter Identification of Stochastic Gene Regulation Models by Indicator-Based Evolutionary Level Set Approximation
Front Matter
On Using Cognition for Anomaly Detection in SDN
Feature Creation Using Genetic Algorithms for Zero False Positive Malware Classification
Multi-centroid Cluster Analysis in Malware Research
Front Matter
Cooperation in Multicriteria Repeated Games
Evolving Game Strategies in a Dynamic Cournot Oligopoly Setting
Front Matter
Efficient Real-Parameter Single Objective Optimizer Using Hierarchical CMA-ES Solvers
Multi-point Efficient Global Optimization Using Niching Evolution Strategy
Community Detection in NK Landscapes - An Empirical Study of Complexity Transitions in Interactive Networks
Front Matter
River Flow Forecasting Using an Improved Artificial Neural Network
Evolutionary Cost-Sensitive Balancing: A Generic Method for Imbalanced Classification Problems
Balancing the Subtours for Multiple TSP Approached with ACS: Clustering-Based Approaches Vs. MinMax Formulation
Back Matter
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