无监督特征选择方法分类,包括其优点、缺点和挑战

Rajesh Dwivedi, Aruna Tiwari, Neha Bharill, Milind Ratnaparkhe, Alok Kumar Tiwari
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引用次数: 0

摘要

在模式识别、统计学、机器学习和数据挖掘中,特征或属性选择是一种标准的降维方法。其目的是从原始数据集中应用一组规则来选择基本的相关特征。近年来,无监督特征选择方法在各个研究领域都获得了极大的关注。本研究对科学文献中最新、最有效的无监督特征选择技术进行了条理清晰的总结。我们对这些策略进行了分类,阐明了它们的重要特征和基本原理。此外,我们还概述了文献中评述的几大类无监督特征选择方法的优缺点、挑战和实际应用。此外,我们还通过实验分析对几种最先进的无监督特征选择方法进行了比较。
本文章由计算机程序翻译,如有差异,请以英文原文为准。

A taxonomy of unsupervised feature selection methods including their pros, cons, and challenges

A taxonomy of unsupervised feature selection methods including their pros, cons, and challenges

In pattern recognition, statistics, machine learning, and data mining, feature or attribute selection is a standard dimensionality reduction method. The goal is to apply a set of rules to select essential and relevant features from the original dataset. In recent years, unsupervised feature selection approaches have garnered significant attention across various research fields. This study presents a well-organized summary of the latest and most effective unsupervised feature selection techniques in the scientific literature. We introduce a taxonomy of these strategies, elucidating their significant features and underlying principles. Additionally, we outline the pros, cons, challenges, and practical applications of the broad categories of unsupervised feature selection approaches reviewed in the literature. Furthermore, we conducted a comparison of several state-of-the-art unsupervised feature selection methods through experimental analysis.

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