基于优化算法的特征选择方法综述

IF 0.4 Q4 ENGINEERING, MULTIDISCIPLINARY
Zana O. Hamad
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引用次数: 0

摘要

为了减少时间和存储空间的复杂性,已经做了许多工作。特征选择过程是降低系统复杂性的策略之一,可以定义为从特征空间中选择最重要的特征的过程。因此,最有用的功能将被保留,而不太有用的功能将被删除。在故障分类与诊断领域,特征选择在降维中起着重要的作用,有时可能导致高分类率。本文对特征选择处理及其实现方法进行了综述。本研究的主要目标是检查用于突出(选择)选择过程的所有策略,包括过滤器、包装器、元启发式算法和嵌入。重点回顾了用于特征选择的受自然启发的算法,如粒子群算法、灰狼算法、蝙蝠算法、遗传算法、鲸鱼算法和蚁群算法。总体结果证实,特征选择方法对于降低任何基于模型的机器学习算法的复杂性都很重要,有时可能会提高模拟模型的性能。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
REVIEW OF FEATURE SELECTION METHODS USING OPTIMIZATION ALGORITHM
Many works have been done to reduce complexity in terms of time and memory space. The feature selection process is one of the strategies to reduce system complexity and can be defined as a process of selecting the most important feature among feature space. Therefore, the most useful features will be kept, and the less useful features will be eliminated. In the fault classification and diagnosis field, feature selection plays an important role in reducing dimensionality and sometimes might lead to having a high classification rate. In this paper, a comprehensive review is presented about feature selection processing and how it can be done. The primary goal of this research is to examine all of the strategies that have been used to highlight the (selection) selected process, including filter, wrapper, Meta-heuristic algorithm, and embedded. Review of Nature-inspired algorithms that have been used for features selection is more focused such as particle swarm, Grey Wolf, Bat, Genetic, wale, and ant colony algorithm. The overall results confirmed that the feature selection approach is important in reducing the complexity of any model-based machine learning algorithm and may sometimes result in improved performance of the simulated model.
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来源期刊
Journal of Polytechnic-Politeknik Dergisi
Journal of Polytechnic-Politeknik Dergisi ENGINEERING, MULTIDISCIPLINARY-
自引率
33.30%
发文量
125
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