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Toward integrating feature selection algorithms for classification and clustering

机译:面向分类和聚类的集成特征选择算法

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This paper introduces concepts and algorithms of feature selection, surveys existing feature selection algorithms for classification and clustering, groups and compares different algorithms with a categorizing framework based on search strategies, evaluation criteria, and data mining tasks, reveals unattempted combinations, and provides guidelines in selecting feature selection algorithms. With the categorizing framework, we continue our efforts toward-building an integrated system for intelligent feature selection. A unifying platform is proposed as an intermediate step. An illustrative example is presented to show how existing feature selection algorithms can be integrated into a meta algorithm that can take advantage of individual algorithms. An added advantage of doing so is to help a user employ a suitable algorithm without knowing details of each algorithm. Some real-world applications are included to demonstrate the use of feature selection in data mining. We conclude this work by identifying trends and challenges of feature selection research and development.
机译:本文介绍了特征选择的概念和算法,调查了现有的用于分类和聚类的特征选择算法,对不同算法进行了分组,并将其与基于搜索策略,评估标准和数据挖掘任务的分类框架进行比较,揭示了未经尝试的组合,并提供了指导原则选择特征选择算法。通过分类框架,我们将继续努力构建用于智能特征选择的集成系统。提出了一个统一平台作为中间步骤。呈现说明性示例以示出如何将现有特征选择算法如何集成到可以利用各个算法的元算法中。这样做的另一个好处是可以帮助用户采用合适的算法而无需了解每种算法的细节。其中包括一些实际应用程序,以演示功能选择在数据挖掘中的使用。我们通过确定特征选择研究和开发的趋势和挑战来结束这项工作。

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