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Hybrid SMS Spam Filtering System Using Machine Learning Techniques

机译:使用机器学习技术混合动力SMS垃圾邮件过滤系统

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Due to the massive proliferation of Short Message Service (SMS), Spammers got the interest to dig their way into it in the hope to reach more targets. Spam SMS can trick mobile users into giving away their confidential information which can result in severe consequences. The seriousness of this problem has raised the need to develop an accurate Spam filtration solution. Machine learning algorithms have emerged as a great tool to classify data into labels. This description fits our case perfectly as it classifies SMS into two labels: spam or ham. This paper will tackle the SMS spam filtration solutions by introducing a hybrid system using two types of machine learning techniques: supervised & unsupervised machine learning algorithms. The new hybrid system is designed to achieve better spam filtration accuracy and F-measures
机译:由于短消息服务的大规模扩散(SMS),垃圾邮件发送者有兴趣挖掘他们的方式,希望能够达到更多目标。垃圾邮件短信可以欺骗移动用户释放他们的机密信息,这可能导致严重后果。这个问题的严重性提出了开发准确的垃圾邮件过滤解决方案的需要。机器学习算法已成为将数据分类为标签的伟大工具。此描述完美地适合我们的案例,因为它将SMS分为两个标签:垃圾邮件或火腿。本文将通过使用两种机器学习技术引入混合动力系统来解决SMS垃圾邮件过滤解决方案:监督和无监督的机器学习算法。新的混合系统旨在实现更好的垃圾邮件过滤精度和F措施

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