printlogo
ETH Zuerich - Homepage
Computer Engineering and Networks Laboratory (TIK)
 

Publication Details for Inproceedings "Defining and Optimizing Indicator-based Diversity Measures in Multiobjective Search"

 

 Back

 New Search

 

Authors: Tamara Ulrich, Johannes Bader, Lothar Thiele
Group: Computer Engineering
Type: Inproceedings
Title: Defining and Optimizing Indicator-based Diversity Measures in Multiobjective Search
Year: 2010
Month: September
Pub-Key: ubt2010a
Book Titel: Conference on Parallel Problem Solving From Nature (PPSN)
Pages: 707-717
Keywords: EMO
Publisher: Springer
Abstract: In this paper, we elaborate how decision space diversity can be integrated into indicator-based multiobjective search. We introduce DIOP, the diversity integrating multiobjective optimizer, which concurrently optimizes two set-based diversity measures, one in decision space and the other in objective space.We introduce a possibility to improve the diversity of a solution set, where the minimum proximity of these solutions to the Pareto-front is user-defined. Experiments show that DIOP is able to optimize both diversity measures and that the decision space diversity can indeed be improved if the required maximum distance of the solutions to the front is relaxed.
Location: Krakow, Poland
Resources: [BibTeX] [Paper as PDF]

 

 Back

 New Search