利用支持向量机进行类平衡学习的方法:综述与经验评估

IF 3.1 3区 计算机科学 Q2 COMPUTER SCIENCE, ARTIFICIAL INTELLIGENCE
Salim Rezvani, Farhad Pourpanah, Chee Peng Lim, Q. M. Jonathan Wu
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引用次数: 0

摘要

本文综述了使用支持向量机(SVM)及其变体进行类不平衡学习的方法。我们首先解释了 SVM 及其变体的结构,并讨论了它们在类不平衡数据集学习中的低效问题。在类不平衡学习方面,我们对基于 SVM 的模型进行了分层分类。具体来说,我们将基于 SVM 的模型分为重采样法、算法法和融合法,并讨论了每一类中代表性模型的原理。此外,我们还进行了一系列实证评估,使用从低不平衡率到高不平衡率的基准不平衡数据集,比较了各类基于 SVM 的代表性模型的性能。我们的研究结果表明,算法方法由于不需要数据预处理,因此耗时较少,而结合了再采样和算法方法的融合方法通常表现最佳,但计算负荷较高。本文讨论了研究差距和未来研究方向。
本文章由计算机程序翻译,如有差异,请以英文原文为准。

Methods for class-imbalanced learning with support vector machines: a review and an empirical evaluation

Methods for class-imbalanced learning with support vector machines: a review and an empirical evaluation

This paper presents a review on methods for class-imbalanced learning with the Support Vector Machine (SVM) and its variants. We first explain the structure of SVM and its variants and discuss their inefficiency in learning with class-imbalanced data sets. We introduce a hierarchical categorization of SVM-based models with respect to class-imbalanced learning. Specifically, we categorize SVM-based models into re-sampling, algorithmic, and fusion methods, and discuss the principles of the representative models in each category. In addition, we conduct a series of empirical evaluations to compare the performances of various representative SVM-based models in each category using benchmark imbalanced data sets, ranging from low to high imbalanced ratios. Our findings reveal that while algorithmic methods are less time-consuming owing to no data pre-processing requirements, fusion methods, which combine both re-sampling and algorithmic approaches, generally perform the best, but with a higher computational load. A discussion on research gaps and future research directions is provided.

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来源期刊
Soft Computing
Soft Computing 工程技术-计算机:跨学科应用
CiteScore
8.10
自引率
9.80%
发文量
927
审稿时长
7.3 months
期刊介绍: Soft Computing is dedicated to system solutions based on soft computing techniques. It provides rapid dissemination of important results in soft computing technologies, a fusion of research in evolutionary algorithms and genetic programming, neural science and neural net systems, fuzzy set theory and fuzzy systems, and chaos theory and chaotic systems. Soft Computing encourages the integration of soft computing techniques and tools into both everyday and advanced applications. By linking the ideas and techniques of soft computing with other disciplines, the journal serves as a unifying platform that fosters comparisons, extensions, and new applications. As a result, the journal is an international forum for all scientists and engineers engaged in research and development in this fast growing field.
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