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SMS Spam Filtering Using Supervised Machine Learning Algorithms

机译:使用监督机器学习算法的SMS垃圾邮件过滤

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摘要

This paper presents detection of Spam and ham messages using various supervised machine learning algorithms like naive Bayes Algorithm, support vector machines algorithm, and the maximum entropy algorithm and compares their performance in filtering the Ham and Spam messages. As people indulge more in Web-based activities, and with rising sharing of private-data by companies, SMS spam is very common. SMS spam filter inherits much functionality from E-mail Spam Filtering. Comparing the performance of various supervised learning algorithms we find the support vector machine algorithm gives us the most accurate result.
机译:本文介绍了使用各种监督机器学习算法(如朴素贝叶斯算法,支持向量机算法和最大熵算法)检测垃圾邮件和垃圾邮件,并比较了它们在过滤垃圾邮件和垃圾邮件中的性能。随着人们更多地沉迷于基于Web的活动中,并且随着公司对私人数据共享的增加,SMS垃圾邮件非常普遍。 SMS垃圾邮件筛选器从“电子邮件垃圾邮件筛选”继承了许多功能。比较各种监督学习算法的性能,我们发现支持向量机算法可为我们提供最准确的结果。

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