Publication | Open Access
How to Read Many-Objective Solution Sets in Parallel Coordinates [Educational Forum]
115
Citations
35
References
2017
Year
EngineeringEvolutionary Algor IthmsEvolutionary AlgorithmsEvolutionary Multimodal OptimizationGeometric Constraint SolvingGenetic AlgorithmSystems EngineeringParallel ComputingComputational GeometryEvolution-based MethodParallel Coordinates PlotParallel Problem SolvingMany-objective Solution SetsComputer ScienceEvolutionary ProgrammingNatural SciencesEvolutionary BiologyParallel ProgrammingEvolutionary DesignParallel Coordinates
Rapid development of evolutionary algor ithms in handling many-objective optimization problems requires viable methods of visualizing a high-dimensional solution set. The parallel coordinates plot which scales well to high-dimensional data is such a method, and has been frequently used in evolutionary many-objective optimization. However, the parallel coordinates plot is not as straightforward as the classic scatter plot to present the information contained in a solution set. In this paper, we make some observations of the parallel coordinates plot, in terms of comparing the quality of solution sets, understanding the shape and distribution of a solution set, and reflecting the relation between objectives. We hope that these observations could provide some guidelines as to the proper use of the parallel coordinates plot in evolutionary manyobjective optimization.
| Year | Citations | |
|---|---|---|
Page 1
Page 1