An Efficient Dynamic Resource Allocation Framework for Evolutionary Bilevel Optimization
Dejun Xu, Kai Ye, Zimo Zheng, Tao Zhou, Gary G. Yen, Min Jiang

TL;DR
This paper introduces DRC-BLEA, a dynamic resource allocation framework for evolutionary bilevel optimization that improves efficiency by prioritizing promising tasks and reducing unnecessary lower-level evaluations.
Contribution
The paper proposes a novel competitive quasi-parallel paradigm with resource sharing and cooperation mechanisms to enhance efficiency in evolutionary bilevel optimization.
Findings
Achieves competitive accuracy on diverse problems
Reduces function evaluations significantly
Decreases overall running time
Abstract
Bilevel optimization problems are characterized by an interactive hierarchical structure, where the upper level seeks to optimize its strategy while simultaneously considering the response of the lower level. Evolutionary algorithms are commonly used to solve complex bilevel problems in practical scenarios, but they face significant resource consumption challenges due to the nested structure imposed by the implicit lower-level optimality condition. This challenge becomes even more pronounced as problem dimensions increase. Although recent methods have enhanced bilevel convergence through task-level knowledge sharing, further efficiency improvements are still hindered by redundant lower-level iterations that consume excessive resources while generating unpromising solutions. To overcome this challenge, this paper proposes an efficient dynamic resource allocation framework for…
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Taxonomy
TopicsStochastic processes and financial applications · Housing Market and Economics · Risk and Portfolio Optimization
