移动互联网中文垃圾邮件数据过滤模型

Yitao Yang, Runqiu Hu, Guozi Sun, Chengyan Qiu
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引用次数: 1

摘要

随着移动互联网的快速发展和移动智能终端的普及,人们的学习、工作和生活变得越来越高效。当人们享受这些现代产品的效率时,大量的垃圾信息,如广告、色情、赌博、欺诈等涌入人们的日常生活。上述信息主要是通过针对任何应用程序的网络数据传输的。许多研究人员和学者提出了不同的检测和过滤方法,其中基于内容的支持向量机方法最为流行。然而,针对网络数据的研究却很少。本文提出了一种基于贝叶斯分类的移动端网络数据过滤器。重点研究了中文垃圾邮件数据的检测与过滤。除了自动学习新规则外,该过滤器还实现了被动增量学习。实验表明,该滤波器具有较高的检测精度和系统资源占用的平均水平。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Chinese Spam Data Filter Model in Mobile Internet
With the rapid development of mobile Internet and the popularization of mobile intellectual terminals, learning, working and living were getting more and more efficient. While people were enjoying the efficiency if these modern products, large amount of spam information like advertising, pornography, gambling, fraud were flocking into people’s daily life. The information mentioned above was mostly transmitted through networking data targeting any application. Different methods of detecting and filtering had been proposed by many researchers and scholars, among which the method of SVM based on content was the most popular. However, research focusing on network data had rarely been conducted. The paper proposed a networking data filter running on mobile terminals based on Bayesian Classification. It focused on the data of Chinese spam data detecting and filtering. In addition to the automatic learning of new rules, the filter also implemented a passive incremental learning. Experiments showed that the filter had a higher detection accuracy and an average level of system resource occupancy.
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