Article ID Journal Published Year Pages File Type
476771 European Journal of Operational Research 2013 12 Pages PDF
Abstract

The structure of the search space explains the behavior of multiobjective search algorithms, and helps to design well-performing approaches. In this work, we analyze the properties of multiobjective combinatorial search spaces, and we pay a particular attention to the correlation between the objective functions. To do so, we extend the multiobjective NK-landscapes in order to take the objective correlation into account. We study the co-influence of the problem dimension, the degree of non-linearity, the number of objectives, and the objective correlation on the structure of the Pareto optimal set, in terms of cardinality and number of supported solutions, as well as on the number of Pareto local optima. This work concludes with guidelines for the design of multiobjective local search algorithms, based on the main fitness landscape features.

► Analyze the structure of multiobjective combinatorial search spaces. ► Design a new multiobjective benchmark problem based on MNK-landscapes. ► Study the co-influence of problem properties on the problem structure. ► Guidelines for the design of multiobjective local search algorithms.

Related Topics
Physical Sciences and Engineering Computer Science Computer Science (General)
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