A Review on Classification of Data Imbalance using BigData

Ramasubramanian., Hariharan Shanmugasundaram
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引用次数: 4

Abstract

Classification is one among the data mining function that assigns items in a collection to target categories or collection of data to provide more accurate predictions and analysis. Classification using supervised learning method aims to identify the category of the class to which a new data will fall under. With the advancement of technology and increase in the generation of real-time data from various sources like Internet, IoT and Social media it needs more processing and challenging. One such challenge in processing is data imbalance. In the imbalanced dataset, majority classes dominate over minority classes causing the machine learning classifiers to be more biased towards majority classes and also most classification algorithm predicts all the test data with majority classes. In this paper, the author analysis the data imbalance models using big data and classification algorithm.
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基于大数据的数据不平衡分类研究综述
分类是数据挖掘功能中的一种,它将集合中的项分配给目标类别或数据集合,以提供更准确的预测和分析。使用监督学习方法进行分类的目的是确定新数据所属的类的类别。随着技术的进步和来自互联网、物联网和社交媒体等各种来源的实时数据的增加,它需要更多的处理和挑战。处理中的一个这样的挑战是数据不平衡。在不平衡的数据集中,多数类占主导地位,导致机器学习分类器更偏向于多数类,并且大多数分类算法预测所有具有多数类的测试数据。本文利用大数据和分类算法对数据不平衡模型进行了分析。
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