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Efficient Data Preprocessing approach for Imbalanced Data in Email Classification System

机译:电子邮件分类系统中不平衡数据的高效数据预处理方法

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摘要

Email is one of the important means of communication over the Internet. Due to the rapid growth of Internet, usage of email communication for business, personal and other works has resulted into generation of electronic data in exponential order. Applying machine learning techniques on the huge raw data may degrade the performance. Hence, the data has to be prepared for better performance of the machine learning techniques. The preprocessing phase in machine learning applications such as classification, clustering and prediction is intended to reduce the size of data. This paper proposes a new data preprocessing approach for imbalanced data in email classification domain to measure the effects of various preprocessing methods on different machine learning classifiers. Contribution of various preprocessing methods on the imbalanced dataset is discussed. Accuracy analysis reveals that the proposed approach significantly improves the accuracy of all the machine learning classifiers used in this work. The outcome of this work showed that, success rate of logistic regression achieved 90.39% accuracy in the proposed approach.
机译:电子邮件是互联网通信的重要手段之一。由于互联网的快速增长,对业务,个人和其他作品的电子邮件通信的使用导致了以指数顺序产生电子数据。在庞大的原始数据上应用机器学习技术可能会降低性能。因此,必须准备数据以便更好地性能地进行机器学习技术。机器学习应用程序中的预处理阶段,例如分类,聚类和预测旨在减小数据的大小。本文提出了一种新的数据预处理方法,用于电子邮件分类域中的不平衡数据,以测量各种预处理方法对不同机器学习分类器的影响。讨论了各种预处理方法对不平衡数据集的贡献。准确性分析表明,所提出的方法显着提高了这项工作中所有机器学习分类器的准确性。这项工作的结果表明,逻辑回归的成功率以拟议的方法实现了90.39%的准确性。

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