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基于特征分组的特征选择方法综述。

Review of feature selection approaches based on grouping of features.

机构信息

Department of Computer Engineering, Hasan Kalyoncu University, Gaziantep, Turkey.

Department of Electrical and Computer Engineering, Abdullah Gul University, Kayseri, Turkey.

出版信息

PeerJ. 2023 Jul 17;11:e15666. doi: 10.7717/peerj.15666. eCollection 2023.

Abstract

With the rapid development in technology, large amounts of high-dimensional data have been generated. This high dimensionality including redundancy and irrelevancy poses a great challenge in data analysis and decision making. Feature selection (FS) is an effective way to reduce dimensionality by eliminating redundant and irrelevant data. Most traditional FS approaches score and rank each feature individually; and then perform FS either by eliminating lower ranked features or by retaining highly-ranked features. In this review, we discuss an emerging approach to FS that is based on initially grouping features, then scoring groups of features rather than scoring individual features. Despite the presence of reviews on clustering and FS algorithms, to the best of our knowledge, this is the first review focusing on FS techniques based on grouping. The typical idea behind FS through grouping is to generate groups of similar features with dissimilarity between groups, then select representative features from each cluster. Approaches under supervised, unsupervised, semi supervised and integrative frameworks are explored. The comparison of experimental results indicates the effectiveness of sequential, optimization-based (, fuzzy or evolutionary), hybrid and multi-method approaches. When it comes to biological data, the involvement of external biological sources can improve analysis results. We hope this work's findings can guide effective design of new FS approaches using feature grouping.

摘要

随着技术的飞速发展,产生了大量的高维数据。这种高维度包括冗余和不相关,给数据分析和决策带来了巨大的挑战。特征选择(FS)是一种通过消除冗余和不相关的数据来降低维度的有效方法。大多数传统的 FS 方法逐个对每个特征进行评分和排序;然后通过消除排名较低的特征或保留排名较高的特征来执行 FS。在这篇综述中,我们讨论了一种新兴的基于特征分组的 FS 方法。这种方法首先对特征进行分组,然后对特征组进行评分,而不是对单个特征进行评分。尽管已经有关于聚类和 FS 算法的综述,但据我们所知,这是第一篇专注于基于分组的 FS 技术的综述。基于分组的 FS 的典型思想是生成具有组间相似性和组间差异的相似特征组,然后从每个聚类中选择有代表性的特征。探讨了监督、无监督、半监督和综合框架下的方法。实验结果的比较表明了顺序、基于优化(模糊或进化)、混合和多方法方法的有效性。在涉及生物数据时,外部生物源的参与可以改善分析结果。我们希望这项工作的发现能够指导使用特征分组的有效设计新的 FS 方法。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/921d/10358338/d554e12e34b2/peerj-11-15666-g001.jpg

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