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Improving Algorithm Response to Preference Changes in Multiobjective Optimisation Using Archives

conference contribution
posted on 2024-10-31, 21:10 authored by Kendall TaylorKendall Taylor, Xiaodong LiXiaodong Li, Jeffrey ChanJeffrey Chan
Using evolutionary algorithms to solve optimisation problems with multiple objectives has proven very successful over the past few decades. The ability of these methods to efficiently find sets of solutions representing trade-offs between conflicting objectives has enhanced decision making in a wide variety of fields. Increasingly though, such techniques are being adapted to incorporate end-user preferences in order to reduce search spaces and provide smaller sets of targeted solutions. Eliciting these preferences interactively during optimisation has also become popular and helps a decision maker explore and learn and the problem and its range of solutions. Interactivity also facilitates the correction of mistakes and inaccurate preferences, leading to more satisfactory solutions, faster. In order to achieve these benefits an algorithm must be able to rapidly respond to changes in preferences. This work explores the use of secondary population archives to ensure a preference-based algorithm can change its search focus efficiently and effectively. When preferences change and the search is redirected to a new region of interest, an archive of previously found solutions can be consulted and solutions close to the new region can be included in the current population. This work shows how such archives can be implemented and how they can improve responsiveness for certain problems.

History

Start page

2442

End page

2449

Total pages

8

Outlet

IEEE Congress on Evolutionary Computation

Name of conference

IEEE Congress on Evolutionary Computation

Publisher

IEEE

Place published

Wellington, New Zealand, New Zealand

Start date

2019-06-10

End date

2019-06-13

Language

English

Copyright

© 2019 IEEE

Former Identifier

2006094976

Esploro creation date

2020-06-22

Fedora creation date

2019-12-02

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