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A generic optimising feature extraction method using multiobjective genetic programming

机译:一种使用多目标遗传规划的通用优化特征提取方法

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摘要

In this paper, we present a generic, optimising feature extraction method using multiobjective genetic programming. We re-examine the feature extraction problem and show that effective feature extraction can significantly enhance the performance of pattern recognition systems with simple classifiers. A framework is presented to evolve optimised feature extractors that transform an input pattern space into a decision space in which maximal class separability is obtained. We have applied this method to real world datasets from the UCI Machine Learning and StatLog databases to verify our approach and compare our proposed method with other reported results. We conclude that our algorithm is able to produce classifiers of superior (or equivalent) performance to the conventional classifiers examined, suggesting removal of the need to exhaustively evaluate a large family of conventional classifiers on any new problem.
机译:在本文中,我们提出了一种使用多目标遗传规划的通用优化特征提取方法。我们重新研究了特征提取问题,并表明有效的特征提取可以通过简单的分类器显着增强模式识别系统的性能。提出了一种框架,以发展优化的特征提取器,这些特征提取器将输入模式空间转换为决策空间,在决策空间中获得最大的类可分离性。我们已将此方法应用于UCI机器学习和StatLog数据库的现实世界数据集,以验证我们的方法并将我们提出的方法与其他报告的结果进行比较。我们得出的结论是,我们的算法能够产生性能优于(或同等)常规分类器的分类器,这表明无需针对任何新问题详尽评估大型传统分类器。

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