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Parallelization of population-based multi-objective meta-heuristics: An empirical study
Authors:R Baños  C Gil  B Paechter  J Ortega
Institution:1. Dept. Arquitectura de Computadores y Electrónica, Universidad de Almería, La Cañada de San Urbano s/n, 04120 Almería, Spain;2. Centre for Emergent Computing, Napier University, EH10 5DT Edinburgh, Scotland;3. Dept. Arquitectura y Tecnología de Computadores, Universidad de Granada, C/ Daniel Saucedo Aranda, E-18071 Granada, Spain
Abstract:In single-objective optimization it is possible to find a global optimum, while in the multi-objective case no optimal solution is clearly defined, but several that simultaneously optimize all the objectives. However, the majority of this kind of problems cannot be solved exactly as they have very large and highly complex search spaces. Recently, meta-heuristic approaches have become important tools for solving multi-objective problems encountered in industry as well as in the theoretical field. Most of these meta-heuristics use a population of solutions, and hence the runtime increases when the population size grows. An interesting way to overcome this problem is to apply parallel processing. This paper analyzes the performance of several parallel paradigms in the context of population-based multi-objective meta-heuristics. In particular, we evaluate four alternative parallelizations of the Pareto simulated annealing algorithm, in terms of quality of the solutions, and speedup.
Keywords:Parallel processing  Multi-objective optimization  Pareto simulated annealing  Graph partitioning
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