Benchmarking coevolutionary teaming under classification problems with large attribute spaces

J. Doucette, P. Lichodzijewski, M. Heywood
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引用次数: 1

Abstract

Benchmarking of a team based model of Genetic Programming demonstrates that the naturally embedded style of feature selection is usefully extended by the teaming metaphor to provide solutions in terms of exceptionally low attribute counts. To take this concept to its logical conclusion the teaming model must be able to build teams with a non-overlapping behavioral trait, from a single population. The Symbiotic Bid-Based (SBB) algorithm is demonstrated to fit this purpose under an evaluation utilizing data sets with 650 to 5,000 attributes. The resulting solutions are one to two orders simpler than solutions identified under the alternative embedded paradigms of C4.5 and MaxEnt.
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大属性空间分类问题下协同进化团队的基准研究
基于团队的遗传规划模型的基准测试表明,自然嵌入的特征选择风格被团队隐喻有效地扩展,以提供异常低属性计数的解决方案。为了使这个概念得到合乎逻辑的结论,团队模型必须能够从单个人群中构建具有非重叠行为特征的团队。在利用650到5000个属性的数据集进行评估的情况下,证明了基于共生出价(Symbiotic Bid-Based, SBB)算法符合这一目的。由此产生的解决方案比在C4.5和MaxEnt的替代嵌入式范例下确定的解决方案简单一到两个数量级。
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