Evolutionary Multi-Criterion Optimization
First International Conference, EMO 2001, Zurich, Switzerland, March 7-9, 2001 Proceedings (Lecture Notes in Computer Science)
1 edition
Our rough guess is there are 178,000 words in this book.
At a pace averaging 250 words per minute, this book will take 11 hours and 52 minutes to read. With a half hour per day, this will take 24 days to read.
How long will it take you?
This book will take an estimated to read at a reading speed averaging words per minute. With 30 minutes per day, this will take to read.
Enter your reading speedYou can take one of our WPM reading speed tests to find your reading speed.
Create a free account to track your reading progress, build your reading list, and set reading goals.
Contributions
- Eckart Zitzler (Editor) - Contributor
- Kalyanmoy Deb (Editor) - Contributor
- Lothar Thiele (Editor) - Contributor
- Carlos A. Coello Coello (Editor) - Contributor
- David Corne (Editor) - Contributor
Publication
2001-03-26 - Springer
Language
English
Word Count
178,000 words, Guess
Page Count
712 pages
Physical Format
Paperback
Identifiers
- Open LibraryOL9057216M
- ISBN-139783540417453
- ISBN-103540417451
- OCLC Control Number46240282
- Library of Congress Control Number2001020465
and 1 more
- Goodreads3069478
Classifications
- LCCT57.95 .I57 2001
Description
Evolutionary Multi-Criterion Optimization: First International Conference, EMO 2001 Zurich, Switzerland, March 7–9, 2001 Proceedings<br />Author: Eckart Zitzler, Lothar Thiele, Kalyanmoy Deb, Carlos Artemio Coello Coello, David Corne<br /> Published by Springer Berlin Heidelberg<br /> ISBN: 978-3-540-41745-3<br /> DOI: 10.1007/3-540-44719-9<br /><br />Table of Contents:<p></p><ul><li>Some Methods for Nonlinear Multi-objective Optimization </li><li>A Short Tutorial on Evolutionary Multiobjective Optimization </li><li>An Overview in Graphs of Multiple Objective Programming </li><li>Poor-Definition, Uncertainty, and Human Factors - Satisfying Multiple Objectives in Real-World Decision-Making Environments </li><li>Controlled Elitist Non-dominated Sorting Genetic Algorithms for Better Convergence </li><li>Specification of Genetic Search Directions in Cellular Multi-objective Genetic Algorithms </li><li>Adapting Weighted Aggregation for Multiobjective Evolution Strategies </li><li>Incrementing Multi-objective Evolutionary Algorithms: Performance Studies and Comparisons </li><li>A Micro-Genetic Algorithm for Multiobjective Optimization </li><li>Evolutionary Algorithms for Multicriteria Optimization with Selecting a Representative Subset of Pareto Optimal Solutions </li><li>Multi-objective Optimisation Based on Relation Favour </li><li>Comparison of Evolutionary and Deterministic Multiobjective Algorithms for Dose Optimization in Brachytherapy </li><li>On The Effects of Archiving, Elitism, and Density Based Selection in Evolutionary Multi-objective Optimization </li><li>Global Multiobjective Optimization with Evolutionary Algorithms: Selection Mechanisms and Mutation Control </li><li>Inferential Performance Assessment of Stochastic Optimisers and the Attainment Function </li><li>A Statistical Comparison of Multiobjective Evolutionary Algorithms Including the MOMGA-II </li><li>Performance of Multiple Objective Evolutionary Algorithms on a Distribution System Design Problem - Computational Experiment </li><li>An Infeasibility Objective for Use in Constrained Pareto Optimization </li><li>Reducing Local Optima in Single-Objective Problems by Multi-objectivization </li><li>Constrained Test Problems for Multi-objective Evolutionary Optimization</li></ul>
First Sentence
Multiple criteria decision making (MCDM) problems form an extensive field where the best possible compromise should be found by evaluating several conflicting objectives.
Subjects
Topics
Other Editions
- Evolutionary Multi-Criterion Optimization: First International Conference, EMO 2001, Zurich, Switzerland, March 7-9, 2001 Proceedings (Lecture Notes in Computer Science)
Reader Reviews
No reviews yet for this book.
Be the first to share your thoughts!