A Novel Hybrid Sampling Algorithm for Solving Class Imbalance Problem in Big Data

IF 0.5 Q4 MATHEMATICS, INTERDISCIPLINARY APPLICATIONS Advances in Data Science and Adaptive Analysis Pub Date : 2021-08-18 DOI:10.1142/s2424922x21500054
Khyati Ahlawat, A. Chug, A. Singh
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引用次数: 1

Abstract

The uneven distribution of classes in any dataset poses a tendency of biasness toward the majority class when analyzed using any standard classifier. The instances of the significant class being deficient in numbers are generally ignored and their correct classification which is of paramount interest is often overlooked in calculating overall accuracy. Therefore, the conventional machine learning approaches are rigorously refined to address this class imbalance problem. This challenge of imbalanced classes is more prevalent in big data scenario due to its high volume. This study deals with acknowledging a sampling solution based on cluster computing in handling class imbalance problems in the case of big data. The newly proposed approach hybrid sampling algorithm (HSA) is assessed using three popular classification algorithms namely, support vector machine, decision tree and k-nearest neighbor based on balanced accuracy and elapsed time. The results obtained from the experiment are considered promising with an efficiency gain of 42% in comparison to the traditional sampling solution synthetic minority oversampling technique (SMOTE). This work proves the effectiveness of the distribution and clustering principle in imbalanced big data scenarios.
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一种新的混合抽样算法解决大数据中的类不平衡问题
当使用任何标准分类器进行分析时,任何数据集中类的不均匀分布都会导致偏向大多数类的趋势。重要类在数量上缺乏的情况通常被忽略,它们的正确分类是最重要的,但在计算总体准确性时往往被忽视。因此,传统的机器学习方法被严格改进以解决这种类不平衡问题。由于大数据的高容量,这种不平衡类的挑战在大数据场景中更为普遍。本文研究了一种基于集群计算的抽样方法在处理大数据情况下的类不平衡问题。采用支持向量机、决策树和基于平衡精度和运行时间的k近邻三种常用分类算法对混合采样算法进行了评价。实验结果表明,与传统的采样溶液合成少数过采样技术(SMOTE)相比,该方法的效率提高了42%。这一工作证明了分布聚类原理在不平衡大数据场景下的有效性。
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Advances in Data Science and Adaptive Analysis
Advances in Data Science and Adaptive Analysis MATHEMATICS, INTERDISCIPLINARY APPLICATIONS-
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