Problem features versus algorithm performance on rugged multiobjective combinatorial fitness landscapes
Abstract:
In this article, we attempt to understand and to contrast the impact of problem features on the performance of randomized search heuristics for black-box multiobjective combinatorial optimization problems. At first, we measure the performance of two conventional dominance-based approaches with unbounded archive on a benchmark of enumerable binary optimization problems with tunable ruggedness, objective space dimension, and objective correlation (ρMNK-landscapes). Precisely, we investigate the expected runtime required by a global evolutionary optimization algorithm with an ergodic variation operator (GSEMO) and by a neighborhood-based local search heuristic (PLS), to identify a (1 + ε)−approximation of the Pareto set. Then, we define a number of problem features characterizing the fitness landscape, and we study their intercorrelation and their association with algorithm runtime on the benchmark instances. At last, with a mixed-effects multilinear regression we assess the individual and joint effect of problem features on the performance of both algorithms, within and across the instance classes defined by benchmark parameters. Our analysis reveals further insights into the importance of ruggedness and multimodality to characterize instance hardness for this family of multiobjective optimization problems and algorithms.
Año de publicación:
2017
Keywords:
- Multilevel multivariate analysis
- Evolutionary multiobjective optimization
- Feature-based analysis
- Black-box 0-1 multiobjective problems
- Random-effects mixed models
- Empirical performance modeling
- Fitness landscape and problem difficulty
Fuente:
Tipo de documento:
Article
Estado:
Acceso restringido
Áreas de conocimiento:
- Optimización matemática
- Combinatoria
Áreas temáticas:
- Ciencias de la computación