Evolutionary Multiobjective Optimization: Papers

An Efficient Approach to Unbounded Bi-Objective Archives – Introducing the Mak_ Tree Algorithm (Page 619)
A. Berry (University of Tasmania)
P. Vamplew (University of Ballarat)

Combining Gradient Techniques for Numerical Multi–Objective Evolutionary Optimization (Page 627)
P. A. N. Bosman (Centre for Mathematics and Computer Science)
E. D. de Jong (Utrecht University)

Reference Point Based Multi-Objective Optimization Using Evolutionary Algorithms (Page 635)
K. Deb, J. Sundar (Indian Institute of Technology)

Towards Estimating Nadir Objective Vector Using Evolutionary Approaches (Page 643)
K. Deb, S. Chaudhuri (Indian Institute of Technology)
K. Meittinen (Helsinki School of Economics)

On The Effect of Populations in Evolutionary Multi-objective Optimization (Page 651)
O. Giel (Universität Dortmund)
P. K. Lehre (Norwegian University of Science and Technology)

Local Search for Multiobjective Function Optimization: Pareto Descent Method (Page 659)
K. Harada, J. Sakuma, S. Kobayashi (Tokyo Institute of Technology)

Hybridization of Genetic Algorithm and Local Search in Multiobjective Function Optimization: Recommendation of GA then LS (Page 667)
K. Harada (Tokyo Institute of Technology)
K. Ikeda (Kyoto University)
S. Kobayashi, J. Sakuma, I. Ono (Tokyo Institute of Technology)

A New Proposal for Multi-Objective Optimzation using Differential Evolution and Rough Sets Theory (Page 675)
A. G. Hernández-Díaz (Pablo de Olavide University)
L. V. Santana-Quintero (CINVESTAV-IPN)
C. Coello Coello (CINVESTAV-IPN)
R. Caballero (University of Málaga)
J. Molina (University of Málaga)

Rotated Test Problems for Assessing the Performance of Multi-objective Optimization Algorithms (Page 683)
A. W. Iorio (RMIT University)
X. Li (RMIT University)

Incorporating Directional Information within a Differential Evolution Algorithm for Multi-objective Optimization (Page 691)
A. W. Iorio, X. Li (RMIT University)

Mulitobjective Genetic Algorithms for Materialized View Selection in OLAP Data Warehouses (Page 699)
M. Lawrence (Dalhousie University)

Inside a Predator-Prey Model for Multi-Objective Optimization: A Second Study (Page 707)
C. Grimme, K. Schmitt (University of Dortmund)

An Efficient Multi-objective Evolutionary Algorithm with Steady-State Replacement Model (Page 715)
D. Srinivasan, L. Rachmawati (National University of Singapore)

Multi-objective Evolutionay Optimization for Visual Data Mining with Virtual Reality Spaces: Application to Alzheimer Gene Expressions (Page 723)
J. J. Valdés, A. J. Barton (National Research Council Canada)

Design Synthesis of Microelectromechanical Systems Using Genetic Algorithms with Component-Based Genotype Representation (Page 731)
Y. Zhang (University of California at Berkeley)
R. Kamalian (Kyushu University)
A. M. Agogino, C. H. Séquin (University of California at Berkeley)

Evolutionary Multiobjective Optimization: Posters

Incorporation of Decision Maker's Preference into Evolutionary Multiobjective Optimization Algorithms (Page 741)
H. Ishibuchi, Y. Nojima, K. Narukawa, T. Doi (Osaka Prefecture University)

The Multi-Objective Constrained Assignment Problem (Page 743)
M. P. Kleeman, G. B. Lamont (Air Force Institute of Technology)

A New Multi-Objective Evolutionary Algorithm for Solving High Complex Multi-Objective Problems (Page 745)
K. Li (Jiangxi University of Science and Technology, Jiangxi Norman University, Wuhan University)
X. Yue (Jiangxi University of Science and Technology)
L. Kang (Wuhan University)
Z. Chen (Southern Methodist University)

Comparison of Multi-Objective Evolutionary Algorithms in Optimizing Combinations of Reinsurance Contracts (Page 747)
I. Oesterreicher, A. Mitschele (University Karlsruhe)
F. Schlottmann (GILLARDON AG)
D. Seese (University Karlsruhe)

A Multi-objective Evolutionary Algorithm with Weighted-Sum Niching for Convergence on Knee Regions (Page 749)
L. Rachmawati, D. Srinivasan (National University of Singapore)