Title
Adaptive weights generation for decomposition-based multi-objective optimization using Gaussian process regression.
Abstract
By transforming a multi-objective optimization problem into a number of single-objective optimization problems and optimizing them simultaneously, decomposition-based evolutionary multi-objective optimization algorithms have attracted much attention in the field of multi-objective optimization. In decomposition-based algorithms, the population diversity is maintained using a set of predefined weight vectors, which are often evenly sampled on a unit simplex. However, when the Pareto front of the problem is not a hyperplane but more complex, the distribution of the final solution set will not be that uniform. In this paper, we propose an adaptive method to periodically regenerate the weight vectors for decomposition-based multi-objective algorithms according to the geometry of the estimated Pareto front. In particular, the Pareto front is estimated via Gaussian process regression. Thereafter, the weight vectors are reconstructed by sampling a set of points evenly distributed on the estimated Pareto front. Experimental studies on a set of multi-objective optimization problems with different Pareto front geometries verify the effectiveness of the proposed adaptive weights generation method.
Year
DOI
Venue
2017
10.1145/3071178.3071339
GECCO
Keywords
Field
DocType
Multi-objective optimization, evolutionary algorithm, decomposition, adaptive weights generation, Gaussian process
Kriging,Mathematical optimization,Evolutionary algorithm,Computer science,Simplex,Multi-objective optimization,Gaussian process,Solution set,Artificial intelligence,Hyperplane,Optimization problem,Machine learning
Conference
Citations 
PageRank 
References 
4
0.41
21
Authors
5
Name
Order
Citations
PageRank
Mengyuan Wu1622.71
Sam Kwong24590315.78
Yuheng Jia39313.13
Ke Li4754.86
Qingfu Zhang57634255.05