不平衡数据分类技术综述

S. J. Basha, S. Madala, K. Vivek, Eedupalli Sai Kumar, Tamminina Ammannamma
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引用次数: 19

摘要

大多数保存实时数据的数据集都有不平衡的类实例组织。某些类的实例总数大大大于其他类,这种类安排的倾斜性质被称为类不平衡问题(CIP)。这种不平衡数据会影响预测性能,因为它错误地预测了弱类数据样本。CIP是由数据挖掘专业人员在广泛的行业经验丰富。不平衡数据的分类是机器学习(ML)和深度学习(DL)领域的一个巨大挑战。这是研究中出现的关键问题,采用采样策略提高分类器的性能在文献综述中引起了广泛的兴趣。在本研究中,解释了组织不平衡数据的重要性,并确实检查了不同学者提出的平衡类别倾斜性质的技术以及衡量不同分类器的准确性和预测率的评估标准。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A Review on Imbalanced Data Classification Techniques
Most all datasets that hold real-time data have an imbalanced organization of class instances. The total quantity of instances in certain classes is substantially greater than other classes and this skewed nature in the arrangement of classes is called Class Imbalance Problem (CIP). This imbalanced data affects the prediction performance since this forecast the weak class data samples wrongly. CIP is experienced by data mining professionals in a broad range of sectors. The categorization of imbalanced data is a huge challenge that arises in the discipline of Machine Learning (ML) and Deep Learning (DL). It is the critical issue that emerged for research and the deployment of sampling strategies to enhance the performance of the classifier has attracted extensive interest in the literature review. In this study, the importance of organizing imbalanced data is explained and the techniques suggested by the different scholars to counterbalance the skewed nature of classes and the assessment criteria for measuring the accuracy and prediction rate of the different classifiers have indeed been examined.
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