Abstract
Pareto Local Search (PLS) is a basic building block in many state-of-the-art multiobjective combinatorial optimization algorithms. However, the basic PLS requires a long time to find high-quality solutions. In this paper, we propose and investigate several parallel strategies to speed up PLS. These strategies are based on a parallel multi-search framework. In our experiments, we investigate the performances of different parallel variants of PLS on the multiobjective unconstrained binary quadratic programming problem. Each PLS variant is a combination of the proposed parallel strategies. The experimental results show that the proposed approaches can significantly speed up PLS while maintaining about the same solution quality. In addition, we introduce a new way to visualize the search process of PLS on two-objective problems, which is helpful to understand the behaviors of PLS algorithms.
Original language | English |
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Pages (from-to) | 62-74 |
Journal | Lecture Notes in Computer Science |
Volume | 10593 |
DOIs | |
Publication status | Published - Nov 2017 |
Event | 11th International Conference on Simulated Evolution and Learning ( SEAL 2017) - Southern University of Science and Technology, Shenzhen, China Duration: 10 Nov 2017 → 13 Nov 2017 http://www.seal2017.com/ |
Research Keywords
- Multiobjective combinatorial optimization
- Parallel metaheuristics
- Pareto local search
- Unconstrained binary quadratic programming