约束遗传算法收敛速度的技术

Y. Rabinovich, A. Wigderson
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引用次数: 31

摘要

本文的主要目的是研究遗传算法的计算方面,主要是收敛速度。尽管这样的算法在实践中被广泛使用,但迄今为止对它们的理论性质,特别是它们的长期行为知之甚少。考虑到分析非线性动力系统固有的困难,以及通常应用GAs的问题的复杂性,这种情况可能并不太令人惊讶。在本文中,我们集中讨论了这类非常简单和自然的系统,并表明至少对于这些系统,可以适当地进行分析。建立了这类系统长期行为的各种性质和严格的定量界限。我们希望,用于分析这些简单系统的技术被证明适用于更广泛的遗传算法,并有助于发展这种有前途的优化方法的数学基础。©1999 John Wiley & Sons, Inc随机结构。Alg。科学通报,14,111-138,1999
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Techniques for bounding the convergence rate of genetic algorithms
The main purpose of the present paper is the study of computational aspects, and primarily the convergence rate, of genetic algorithms (GAs). Despite the fact that such algorithms are widely used in practice, little is known so far about their theoretical properties, and in particular about their long-term behavior. This situation is perhaps not too surprising, given the inherent hardness of analyzing nonlinear dynamical systems, and the complexity of the problems to which GAs are usually applied. In the present paper we concentrate on a number of very simple and natural systems of this sort, and show that at least for these systems the analysis can be properly carried out. Various properties and tight quantitative bounds on the long-term behavior of such systems are established. It is our hope that the techniques developed for analyzing these simple systems prove to be applicable to a wider range of genetic algorithms, and contribute to the development of the mathematical foundations of this promising optimization method. ©1999 John Wiley & Sons, Inc. Random Struct. Alg., 14, 111–138, 1999
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