E-Book, Englisch, Band 2, 382 Seiten, eBook
Larrañaga / Lozano Estimation of Distribution Algorithms
2002
ISBN: 978-1-4615-1539-5
Verlag: Springer US
Format: PDF
Kopierschutz: 1 - PDF Watermark
A New Tool for Evolutionary Computation
E-Book, Englisch, Band 2, 382 Seiten, eBook
Reihe: Genetic Algorithms and Evolutionary Computation
ISBN: 978-1-4615-1539-5
Verlag: Springer US
Format: PDF
Kopierschutz: 1 - PDF Watermark
This text constitutes the first compilation and review of the techniques and applications of this new tool for performing evolutionary computation. is clearly divided into three parts. Part I is dedicated to the foundations of EDAs. In this part, after introducing some probabilistic graphical models - Bayesian and Gaussian networks - a review of existing EDA approaches is presented, as well as some new methods based on more flexible probabilistic graphical models. A mathematical modeling of discrete EDAs is also presented. Part II covers several applications of EDAs in some classical optimization problems: the travelling salesman problem, the job scheduling problem, and the knapsack problem. EDAs are also applied to the optimization of some well-known combinatorial and continuous functions. Part III presents the application of EDAs to solve some problems that arise in the machine learning field: feature subset selection, feature weighting in K-NN classifiers, rule induction, partial abductive inference in Bayesian networks, partitional clustering, and the search for optimal weights in artificial neural networks.
is a useful and interesting tool for researchers working in the field of evolutionary computation and for engineers who face real-world optimization problems. This book may also be used by graduate students and researchers in computer science.
` David E. Goldberg, University of Illinois Champaign-Urbana.
Zielgruppe
Research
Autoren/Hrsg.
Weitere Infos & Material
List of Figures. List of Tables. Preface. Contributing Authors. Series Foreword. Part I: Foundations. 1. An Introduction to Evolutionary Algorithms; J.A. Lozano. 2. An Introduction to Probabilistic Graphical Models; P. Larrañaga. 3. A Review on Estimation of Distribution Algorithms; P. Larrañaga. 4. Benefits of Data Clustering in Multimodal Function Optimization via EDAs; J.M. Peña, et al. 5. Parallel Estimation of Distribution Algorithms; J.A. Lozano, et al. 6. Mathematical Modeling of Discrete Estimation of Distribution Algorithms; C. González, et al. Part II: Optimization. 7. An Empiricial Comparison of Discrete Estimation of Distribution Algorithms; R. Blanco., J.A. Lozano. 8. Results in Function Optimization with EDAs in Continuous Domain; E. Bengoetxea, et al. 9. Solving the 0-1 Knapsack Problem with EDAs; R. Sagarna, P. Larrañaga. 10. Solving the Traveling Salesman Problem with EDAs; V. Robles, et al. 11. EDAs Applied to the Job Shop Scheduling Problem; J.A. Lozano, A. Mendiburu. 12. Solving Graph Matching with EDAs Using a Permutation-Based Representation; E. Bengoetxea, et al. Part III: Machine Learning. 13. Feature Subset Selection by Estimation of Distribution Algorithms; I. Inza, et al. 14. Feature Weighting for Nearest Neighbor by EDAs; I. Inza, et al. 15. Rule Induction by Estimation of Distribution Algorithms; B. Sierra, et al. 16. Partial Abductive Inference in Bayesian Networks: An Empirical Comparison Between GAs and EDAs; L.M. de Campos, et al.17. Comparing K-Means, GAs and EDAs in Partitional Clustering; J. Roure, et al. 18. Adjusting Weights in Artificial Neural Networks using Evolutionary Algorithms; C. Cotta, et al. Index.




