ADHOC:执行有效特征选择的工具

M. Richeldi, P. Lanzi
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引用次数: 21

摘要

ADHOC是一种集成了统计方法和机器学习技术来进行有效特征选择的工具。特征选择在数据分析过程中起着核心作用,因为冗余和不相关的特征通常会降低归纳算法的性能,无论是在速度还是预测精度方面。ADHOC结合了滤波和反馈两种特征选择方法的优点,增强了对给定数据的理解,提高了特征选择过程的效率。我们报告了在真实世界数据上的大量实验结果,证明了ADHOC作为数据约简技术和特征选择方法的有效性。ADHOC已被用于分析几个公司数据库。特别是,它目前用于支持软件项目成本的早期估计这一困难的任务。
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ADHOC: a tool for performing effective feature selection
The paper introduces ADHOC, a tool that integrates statistical methods and machine learning techniques to perform effective feature selection. Feature selection plays a central role in the data analysis process since redundant and irrelevant features often degrade the performance of induction algorithms, both in speed and predictive accuracy. ADHOC combines the advantages of both filter and feedback approaches to feature selection to enhance the understanding of the given data and increase the efficiency of the feature selection process. We report results of extensive experiments on real world data which demonstrate the effectiveness of ADHOC as data reduction technique as well as feature selection method. ADHOC has been employed in the analysis of several corporate databases. In particular, it is currently used to support the difficult task of early estimation of the cost of software projects.
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