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Bilevel optimization based on iterative approximation of multiple mappings

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TLDR
In this paper, the authors proposed an evolutionary optimization method that tries to reduce the computational expense by iteratively approximating two important mappings in bilevel optimization; namely, the lower-level rational reaction mapping and the lower level optimal value function mapping.
Abstract
A large number of application problems involve two levels of optimization, where one optimization task is nested inside the other. These problems are known as bilevel optimization problems and have been studied by both classical optimization community and evolutionary optimization community. Most of the solution procedures proposed until now are either computationally very expensive or applicable to only small classes of bilevel optimization problems adhering to mathematically simplifying assumptions. In this paper, we propose an evolutionary optimization method that tries to reduce the computational expense by iteratively approximating two important mappings in bilevel optimization; namely, the lower level rational reaction mapping and the lower level optimal value function mapping. The algorithm has been tested on a large number of test problems and comparisons have been performed with other algorithms. The results show the performance gain to be quite significant. To the best knowledge of the authors, a combined theory-based and population-based solution procedure utilizing mappings has not been suggested yet for bilevel problems.

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Journal ArticleDOI

A Review on Bilevel Optimization: From Classical to Evolutionary Approaches and Applications

TL;DR: A comprehensive review on bilevel optimization from the basic principles to solution strategies is provided in this paper, where a number of potential application problems are also discussed and an automated text-analysis of an extended list of papers has been performed.

A Bilevel Model of Taxation and its Application to Optimal Highway Pricing

TL;DR: In this article, the authors consider a bilevel model where the leader wants to maximize revenues from a taxation scheme, while the follower rationally reacts to those tax levels, and focus their attention on the special case of a toll-setting problem defined on a multicommodity transportation network.
Posted Content

A Review on Bilevel Optimization: From Classical to Evolutionary Approaches and Applications.

TL;DR: An automated text-analysis of an extended list of papers published on bilevel optimization from the basic principles to solution strategies; both classical and evolutionary is performed.
Journal ArticleDOI

Using Karush-Kuhn-Tucker proximity measure for solving bilevel optimization problems

TL;DR: A single level reduction of a bilevel problem using recently proposed relaxed KKT conditions is discussed, and the idea is found to lead to significant computational savings, especially, in the lower level function evaluations.
Journal ArticleDOI

Evolutionary Bilevel Optimization Based on Covariance Matrix Adaptation

TL;DR: A search distribution sharing mechanism is designed so that it can extract a priori knowledge of the lower-level problem from the upper-level optimizer, which significantly reduces the number of function evaluations.
References
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Journal ArticleDOI

An efficient constraint handling method for genetic algorithms

TL;DR: GA's population-based approach and ability to make pair-wise comparison in tournament selection operator are exploited to devise a penalty function approach that does not require any penalty parameter to guide the search towards the constrained optimum.
Book

Nonlinear Programming: Sequential Unconstrained Minimization Techniques

TL;DR: This report gives the most comprehensive and detailed treatment to date of some of the most powerful mathematical programming techniques currently known--sequential unconstrained methods for constrained minimization problems in Euclidean n-space--giving many new results not published elsewhere.
Journal ArticleDOI

Convergence analysis of canonical genetic algorithms

TL;DR: This paper analyzes the convergence properties of the canonical genetic algorithm with mutation, crossover and proportional reproduction applied to static optimization problems and shows variants of CGA's that always maintain the best solution in the population are shown to converge to the global optimum due to the irreducibility property of the underlying original nonconvergent CGA.
Book

Foundations of Bilevel Programming

Stephan Dempe
TL;DR: This paper presents a meta-modelling framework that automates the very labor-intensive and therefore time-heavy and expensive process of solving linear and Discrete Bilevel Problems.
Book

Optimization of structural topology, shape, and material

TL;DR: The method presented in this book has been developed by Martin Bendsoe in co-operation with other researchers and can be considered as one of the most effective approaches to the optimization of layout and material design as discussed by the authors.
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