Optimistic variants of single-objective bilevel optimization for
evolutionary algorithms
- URL: http://arxiv.org/abs/2008.09926v1
- Date: Sat, 22 Aug 2020 23:12:07 GMT
- Title: Optimistic variants of single-objective bilevel optimization for
evolutionary algorithms
- Authors: Anuraganand Sharma
- Abstract summary: A partial partial evolutionary approach has been proposed to solve the benchmark problems and have outstanding results.
A new variant has also been proposed to the commonly used convergence approaches, i.e. optimistic and pessimistic.
The experimental results demonstrate the algorithm converges differently to optimum solutions with the optimistic variants.
- Score: 6.788217433800101
- License: http://creativecommons.org/licenses/by/4.0/
- Abstract: Single-objective bilevel optimization is a specialized form of constraint
optimization problems where one of the constraints is an optimization problem
itself. These problems are typically non-convex and strongly NP-Hard. Recently,
there has been an increased interest from the evolutionary computation
community to model bilevel problems due to its applicability in the real-world
applications for decision-making problems. In this work, a partial nested
evolutionary approach with a local heuristic search has been proposed to solve
the benchmark problems and have outstanding results. This approach relies on
the concept of intermarriage-crossover in search of feasible regions by
exploiting information from the constraints. A new variant has also been
proposed to the commonly used convergence approaches, i.e., optimistic and
pessimistic. It is called extreme optimistic approach. The experimental results
demonstrate the algorithm converges differently to known optimum solutions with
the optimistic variants. Optimistic approach also outperforms pessimistic
approach. Comparative statistical analysis of our approach with other recently
published partial to complete evolutionary approaches demonstrates very
competitive results.
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