Abstract:
This work proposes an arrangement method of weight vectors using virtual objective vectors supplementing the Pareto front estimation. In decomposition-based evolutionary ...Show MoreMetadata
Abstract:
This work proposes an arrangement method of weight vectors using virtual objective vectors supplementing the Pareto front estimation. In decomposition-based evolutionary multi-objective optimization, weight vectors decompose the Pareto front. Appropriate weight vector distribution depends on the Pareto front shape, which is generally unknown before the search. Objective vectors of obtained non-dominated solutions become a clue to estimate the Pareto front shape and arrange an appropriate weight vector set. However, a sizeable objective vector set is required for a high-quality Pareto front estimation and weight vector arrangement. The proposed method generates and utilizes a virtual objective vector set based on the objective vectors of obtained non-dominated solutions and an extended weight vector set for the Pareto front estimation. Experimental results using benchmark problems with different Pareto front shapes show that the virtual objective vectors generated from a limited number of actual objective vectors contribute to improving the search performance of decomposition-based evolutionary multi-objective optimization.
Published in: 2021 IEEE Congress on Evolutionary Computation (CEC)
Date of Conference: 28 June 2021 - 01 July 2021
Date Added to IEEE Xplore: 09 August 2021
ISBN Information:
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- IEEE Keywords
- Index Terms
- Weight Vector ,
- Objective Vector ,
- Multi-objective Optimization ,
- Gene Vector ,
- Pareto Front ,
- Benchmark Problems ,
- Search Performance ,
- Virtual Setting ,
- Non-dominated Solutions ,
- Virtual Vector ,
- Solid Line ,
- Similar Conditions ,
- Error Bars ,
- Cardinality ,
- Basis Set ,
- Vector-based ,
- Combined Set ,
- Dynamic Approach ,
- Solution Space ,
- Third Quartile ,
- Objective Space ,
- Decomposition Parameters ,
- Standard Basis Vector ,
- Entire Search ,
- Small Vectors ,
- Test Problems ,
- Blue Points ,
- Standard Vector
- Author Keywords
Keywords assist with retrieval of results and provide a means to discovering other relevant content. Learn more.
- IEEE Keywords
- Index Terms
- Weight Vector ,
- Objective Vector ,
- Multi-objective Optimization ,
- Gene Vector ,
- Pareto Front ,
- Benchmark Problems ,
- Search Performance ,
- Virtual Setting ,
- Non-dominated Solutions ,
- Virtual Vector ,
- Solid Line ,
- Similar Conditions ,
- Error Bars ,
- Cardinality ,
- Basis Set ,
- Vector-based ,
- Combined Set ,
- Dynamic Approach ,
- Solution Space ,
- Third Quartile ,
- Objective Space ,
- Decomposition Parameters ,
- Standard Basis Vector ,
- Entire Search ,
- Small Vectors ,
- Test Problems ,
- Blue Points ,
- Standard Vector
- Author Keywords