FP-AK-QIEA-R for Multi-Objective optimization
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Association for Computing Machinery
The Evolutionary Algorithms have main features like: population, evolutionary operations (crossover, mate, mutation and others). Most of them are based on randomness and follow a criteria using fitness like selector. The FP-AK-QIEA-R uses probability density function according to best of initial population to sample new population and uses rewarding criteria to sample around the best of every iteration using cumulative density function estimated for Akima interpolation, it was used for mono-objective problems showing good results. The proposal uses the algorithm FP-AKQIEA-R and add Pareto dominance to experiment with multiobjective problems. The performed experiments use some benchmark functions from the literature and initial results shows a promissory way for the algorithm. © 2016 ACM.
Bioinformatics , Interpolation , Iterative methods , Multiobjective optimization , Optimization , Probability density function , Benchmark functions , Cumulative density functions , Evolutionary operations , Initial population , Multi-objective problem , Particle filter , PDF estimation , Quantum inspired evolutionary algorithm , Evolutionary algorithms