A Boosting-Aided Adaptive Cluster-Based Undersampling Approach for Treatment of Class Imbalance Problem

IF 0.5 4区 计算机科学 Q4 COMPUTER SCIENCE, SOFTWARE ENGINEERING
D. Devi, S. Namasudra, Seifedine Kadry
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引用次数: 25

Abstract

The subject of a class imbalance is a well-investigated topic which addresses performance degradation of standard learning models due to uneven distribution of classes in a dataspace. Cluster-based undersampling is a popular solution in the domain which offers to eliminate majority class instances from a definite number of clusters to balance the training data. However, distance-based elimination of instances often got affected by the underlying data distribution. Recently, ensemble learning techniques have emerged as effective solution due to its weighted learning principle of rare instances. In this article, a boosting aided adaptive cluster-based undersampling technique is proposed to facilitate elimination of learning- insignificant majority class instances from the clusters, detected through AdaBoost ensemble learning model. The proposed work is validated with seven existing cluster based undersampling techniques for six binary datasets and three classification models. The experimental results have established the effectives of the proposed technique than the existing methods.
一种基于增强辅助自适应聚类的欠采样方法处理类失衡问题
类不平衡是一个被广泛研究的主题,它解决了由于数据空间中类分布不均匀而导致标准学习模型性能下降的问题。基于聚类的欠采样是一种流行的解决方案,它提供了从一定数量的聚类中消除大多数类实例来平衡训练数据。然而,基于距离的实例消除常常受到底层数据分布的影响。近年来,集成学习技术因其对罕见实例的加权学习原理而成为一种有效的解决方法。在本文中,提出了一种增强辅助自适应基于聚类的欠采样技术,以促进从AdaBoost集成学习模型检测到的聚类中消除学习无关重要的大多数类实例。用现有的七种基于聚类的欠采样技术对六个二值数据集和三种分类模型进行了验证。实验结果表明,该方法比现有方法更有效。
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来源期刊
International Journal of Data Warehousing and Mining
International Journal of Data Warehousing and Mining COMPUTER SCIENCE, SOFTWARE ENGINEERING-
CiteScore
2.40
自引率
0.00%
发文量
20
审稿时长
>12 weeks
期刊介绍: The International Journal of Data Warehousing and Mining (IJDWM) disseminates the latest international research findings in the areas of data management and analyzation. IJDWM provides a forum for state-of-the-art developments and research, as well as current innovative activities focusing on the integration between the fields of data warehousing and data mining. Emphasizing applicability to real world problems, this journal meets the needs of both academic researchers and practicing IT professionals.The journal is devoted to the publications of high quality papers on theoretical developments and practical applications in data warehousing and data mining. Original research papers, state-of-the-art reviews, and technical notes are invited for publications. The journal accepts paper submission of any work relevant to data warehousing and data mining. Special attention will be given to papers focusing on mining of data from data warehouses; integration of databases, data warehousing, and data mining; and holistic approaches to mining and archiving
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