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Effective Filtering of Unsolicited Messages from Online Social Networks Using Spam Templates and Social Contexts

机译:使用垃圾邮件模板和社交环境有效地过滤来自在线社交网络的未经请求的消息

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摘要

Online social networking sites have shown an unbelievable widening in the last decade. Spammers utilise social networking sites to unroll spam messages due to its fame and use various procedures to spread spam. Consequently, the identification of spam must be well fortified enough to detect unsolicited messages and deter spammers. Though various spam identification procedures are obtainable, to improve the accuracy for spam identification is inevitable. In this work, a method to detect unsolicited messages is proposed to recognise and avert spam messages. The social context parameters such as trust and strength as well as spam template matching are also considered along with basic classifiers for effective spam classification. The intercommunication factors between the users are used for strength calculation. Spam template generation is performed based on the majority merge operation on the spam messages during the training time, and spam templates comparison is performed with the incoming messages during the testing time. Trust value updation is performed after the message classification. Experimental results demonstrate that the proposed model with SVM-Polynomial Radial Basis kernel which provides better accuracy in spam classification and outperforms all the state-of-the-art methods.
机译:在线社交网站在过去十年中表现出令人难以置信的扩展。垃圾邮件发送者利用社交网站展开垃圾邮件,因为它的名望而使用各种程序来传播垃圾邮件。因此,必须充分强化垃圾邮件的识别以检测未经请求的消息和防止垃圾邮件发送者。尽管可以获得各种垃圾邮件识别程序,但提高垃圾邮件识别的准确性是不可避免的。在这项工作中,提出了一种检测未经请求的消息的方法来识别和避免垃圾邮件。还考虑了诸如信任和强度以及垃圾邮件模板匹配的社会上下文参数以及基本分类器,用于有效垃圾邮件分类。用户之间的互通因素用于强度计算。基于训练时间期间的垃圾邮件消息上的多数合并操作执行垃圾邮件模板生成,并且在测试时间期间使用传入消息执行垃圾邮件模板比较。在消息分类后执行信任值更新。实验结果表明,具有SVM多项式径向基础内核的提出模型,可在垃圾邮件分类中提供更好的准确性,优于所有最先进的方法。

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