论进化计算问题的分类学

D. Ashlock, K. Bryden, S. Corns
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引用次数: 3

摘要

分类学是根据一个群体的可测量特征对其成员进行分类的实践。在进化计算中,判断两个问题是否相似的问题既具有挑战性又很重要。一个准确的分类技术可以使研究人员根据过去的经验合理地选择算法和参数设置,从而产生很大的好处。一个好的分类技术还允许选择不同的测试套件,这将对新技术的适当应用领域提供有用的感觉。本研究使用一种标准的分类技术,即层次聚类,对一组分类特征进行分析,这些特征来源于基于图的进化算法的比较研究。结果是一个梯形图,它以合理的方式对所使用的问题进行分类。在此基础上,我们认为这里给出的技术可以用来为任何进化问题的集合提供一个客观的、自动的、可扩展的分类工具,并讨论了改进该技术的可能方法。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
On taxonomy of evolutionary computation problems
Taxonomy is the practice of classifying members of a group based on their measurable characteristics. In evolutionary computation the problem of telling when two problems are similar is both challenging and important. An accurate classification technique would yield large benefits by permitting a researcher to rationally choose algorithm and parameter setting based on past experience. A good classification technique would also permit the selection of diverse test suites that would give a useful sense of the proper domain of application of a new technique. This study uses a standard taxonomic technique, hierarchical clustering, on a set of taxonomic characters derived from a comparative study using graph based evolutionary algorithms. The result is a cladogram that classifies the problems used in a reasonable fashion. Based on this we then argue that the technique given here can be used to provide an objective, automatic, extensible classification tool for any collection of evolutionary problems and discuss possible methods for improving the technique.
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