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Online streaming feature selection: a minimum redundancy, maximum significance approach

机译:在线流特征选择:最小冗余,最大意义方法

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All the traditional feature selection methods assume that the entire input feature set is available from the beginning. However, online streaming features (OSF) are integral part of many real-world applications. In OSF, the number of training examples is fixed while the number of features grows with time as new features stream in. A critical challenge for online streaming feature selection (OSFS) is the unavailability of the entire feature set before learning starts. OS-NRRSAR-SA is a successful OSFS algorithm that controls the unknown feature space in OSF by means of the rough sets-based significance analysis. This paper presents an extension to the OS-NRRSAR-SA algorithm. In the proposed extension, the redundant features are filtered out before significance analysis. In this regard, a redundancy analysis method based on functional dependency concept is proposed. The result is a general OSFS framework containing two major steps, (1) online redundancy analysis that discards redundant features, and (2) online significance analysis, which eliminates non-significant features. The proposed algorithm is compared with OS-NRRSAR-SA algorithm, in terms of compactness, running time and classification accuracy during the features streaming. The experiments demonstrate that the proposed algorithm achieves better results than OS-NRRSAR-SA algorithm, in every way.
机译:所有传统的特征选择方法都假定从头开始提供整个输入功能集。但是,在线流传输功能(OSF)是许多真实世界应用程序的组成部分。在OSF中,训练示例的数量是固定的,而功能的数量随着时间的时间随着新的特征流而来。在线流传输功能选择(OSF)是在学习开始之前的整个功能集的不可用。 OS-NRRSAR-SA是一种成功的OSFS算法,通过基于粗糙的集合的意义分析来控制OSF中的未知特征空间。本文介绍了OS-NRRSAR-SA算法的扩展。在提出的扩展中,在显着分析之前滤除冗余功能。在这方面,提出了一种基于功能依赖性概念的冗余分析方法。结果是一般OSFS框架,包含两个主要步骤,(1)在线冗余分析,丢弃冗余功能,(2)在线意义分析,消除了非重要功能。在特征流期间的紧凑性,运行时间和分类精度方面,将所提出的算法与OS-NRRSAR-SA算法进行比较。实验表明,所提出的算法在各方面的算法比OS-NRRSAR-SA算法达到更好的结果。

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