SMS Spam Filtering on Multiple Background Datasets Using Machine Learning Techniques: A Novel Approach

Rohit Kumar Kaliyar, Pratik Narang, Anurag Goswami
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引用次数: 4

Abstract

Short Message Service (SMS) is one of the well-known and reliable communication services in which a message sends electronically. In the current era, the declining in the cost per SMS day by day by overall all the telecom organizations in India has encouraged the extended utilization of SMS. This ascent pulled in assailants, which have brought about SMS Spam problem. Spam messages include advertisements, free services, promotions and marketing, awards, etc. Individuals are utilizing the ubiquity of cell phone gadgets is growing day by day as telecom giants give a vast variety of new and existing services by reducing the cost of all services. Short Message Service (SMS) is one of the broadly utilized communication services. Due to the high demand for SMS service, it has prompted a growth in mobile phones attacks like SMS Spam. In our proposed approach, we have presented a general model that can distinguish and filter the spam messages utilizing some existing machine learning classification algorithms. Our approach builds a generalized SMS spam-filtering model, which can filter messages from various backgrounds (Singapore, American, Indian English etc.). In our approach, preliminary results are mentioned below based on Singapore and Indian English based publicly available datasets. Our approach showed promise to accomplish a high precision utilizing Indian English SMS large datasets and others background’s datasets also.
利用机器学习技术在多背景数据集上过滤短信垃圾邮件:一种新方法
短消息服务(SMS)是以电子方式发送消息的一种众所周知且可靠的通信服务。在当前时代,印度所有电信组织的每条短信成本日益下降,这鼓励了短信的广泛利用。这种崛起吸引了攻击者,这带来了短信垃圾邮件问题。垃圾讯息包括广告、免费服务、促销及市场推广、奖励等。随着电信巨头通过降低所有服务的成本,提供各种各样的新服务和现有服务,个人正在利用无处不在的手机设备,这一趋势日益增长。短消息服务(SMS)是一种应用广泛的通信服务。由于对短信服务的高需求,它促使了像垃圾短信这样的手机攻击的增长。在我们提出的方法中,我们提出了一个通用模型,可以利用一些现有的机器学习分类算法来区分和过滤垃圾邮件。我们的方法建立了一个通用的短信垃圾邮件过滤模型,该模型可以过滤来自不同背景(新加坡、美国、印度、英语等)的短信。在我们的方法中,基于公开可用的新加坡和印度英语数据集的初步结果如下所述。我们的方法显示了利用印度英语短信大数据集和其他背景数据集实现高精度的希望。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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