MOEA/D with Random Partial Update Strategy
Lavinas, Yuri, Aranha, Claus, Ladeira, Marcelo, Campelo, Felipe
–arXiv.org Artificial Intelligence
Recent studies on resource allocation suggest that some subproblems are more important than others in the context of the MOEA/D, and that focusing on the most relevant ones can consistently improve the performance of that algorithm. These studies share the common characteristic of updating only a fraction of the population at any given iteration of the algorithm. In this work we investigate a new, simpler partial update strategy, in which a random subset of solutions is selected at every iteration. The performance of the MOEA/D using this new resource allocation approach is compared experimentally against that of the standard MOEA/D-DE and the MOEA/D with relative improvement-based resource allocation. The results indicate that using the MOEA/D with this new partial update strategy results in improved HV and IGD values, and a much higher proportion of non-dominated solutions, particularly as the number of updated solutions at every iteration is reduced.
arXiv.org Artificial Intelligence
Jan-20-2020
- Country:
- South America > Brazil
- Federal District > Brasília (0.04)
- Europe > United Kingdom
- England > Essex > Colchester (0.04)
- Asia
- South America > Brazil
- Genre:
- Research Report > Experimental Study (0.69)
- Technology: