迈向有效、无偏的自动特征选择

K. Iswandy, A. König
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引用次数: 7

摘要

从一个更大的集合中选择相关的和非冗余的特征或变量是许多学科中普遍存在的问题。许多自动化方法已经被引入,然而,选择稳定性的重要问题仍然在很大程度上被揭示。可以观察到,数据的微小变化可以导致选择的巨大变化。这损害了统计可靠性和识别率以及知识提取。在我们的工作中,我们采用了一种采用数据采样技术的方法,例如,留一法,并生成选择的统计数据,以确定稳定因子并识别稳定特征。在本文中,我们介绍了改进的一阶和二阶统计选择技术,并证明了它们对三个日益复杂的基准问题的有效性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Towards Effective Unbiased Automated Feature Selection
The selection of relevant and non-redundant features or variables from a larger set is an ubiquitous problem in many disciplines. Numerous automated methods have been introduced, however, the important issue of selection stability is still largely uncovered. It can be observed, that small changes in the data can lead to dramatic changes in the selection. This compromises both statistical reliability and recognition rates as well as knowledge extraction. In our work, we pursue an approach employing data sampling techniques, e.g., leave-one-out method, and generate statistics of selection to determine a stability factor and identify stable features. In this paper, we introduce improved selection techniques from first and second order statistics and demonstrate their effectiveness for three benchmark problems of increasing complexity.
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