A Theoretical Framework of Approximation Error Analysis of Evolutionary Algorithms
October 26, 2018 ยท Declared Dead ยท ๐ arXiv.org
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Authors
Jun He, Yu Chen, Yuren Zhou
arXiv ID
1810.11532
Category
cs.NE: Neural & Evolutionary
Cross-listed
math.OC
Citations
8
Venue
arXiv.org
Last Checked
4 months ago
Abstract
In the empirical study of evolutionary algorithms, the solution quality is evaluated by either the fitness value or approximation error. The latter measures the fitness difference between an approximation solution and the optimal solution. Since the approximation error analysis is more convenient than the direct estimation of the fitness value, this paper focuses on approximation error analysis. However, it is straightforward to extend all related results from the approximation error to the fitness value. Although the evaluation of solution quality plays an essential role in practice, few rigorous analyses have been conducted on this topic. This paper aims at establishing a novel theoretical framework of approximation error analysis of evolutionary algorithms for discrete optimization. This framework is divided into two parts. The first part is about exact expressions of the approximation error. Two methods, Jordan form and Schur's triangularization, are presented to obtain an exact expression. The second part is about upper bounds on approximation error. Two methods, convergence rate and auxiliary matrix iteration, are proposed to estimate the upper bound. The applicability of this framework is demonstrated through several examples.
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