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A novel framework for internet of knowledge protection in social networking services

机译:社交网络服务中知识保护互联网的新颖框架

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摘要

With the increasing number of users on Social Networking Service (SNS), the Internet of knowledge shared on it is also increasing. Given such enhancement of Internet of knowledge on SNS, the probability of spreading spammers on it is also increasing day by day. Several traditional machine-learning methods, such as support vector machines and naive Bayes, have been proposed to detect spammers on SNS. Note, however, that these methods are not efficient due to some issues, such as lower generalization performance and higher training time. An Extreme Learning Machine (ELM) is an efficient classification method that can provide good generalization performance at higher training speed. Nonetheless, it suffers from overfitting and ill-posed problem that can degrade its generalization performance. In this paper, we propose a Bagging ELM-based spammer detection framework that identifies spammers in SNSs with the help of multiple ELMs that we combined using the bagging method. We constructed a labeled dataset of the two most prominent SNSs Twitter and Facebook to evaluate the performance of our framework. The evaluation results show that our framework obtained higher generalization performance rate of 99.01% for the Twitter dataset and 99.02% for the Facebook datasets, while required a lower training time of 1.17 s and 1.10s, respectively. (C) 2017 Elsevier B.V. All rights reserved.
机译:随着使用社交网络服务(SNS)的用户数量的增加,在其上共享的知识互联网也在增加。鉴于SNS知识互联网的这种增强,在其上传播垃圾邮件的可能性也日益增加。已经提出了几种传统的机器学习方法,例如支持向量机和朴素的贝叶斯方法,来检测SNS上的垃圾邮件发送者。但是请注意,由于某些问题,例如较低的泛化性能和较长的训练时间,这些方法效率不高。极限学习机(ELM)是一种有效的分类方法,可以在较高的训练速度下提供良好的泛化性能。尽管如此,它仍然存在过度拟合和不适定的问题,这可能会降低其泛化性能。在本文中,我们提出了一种基于袋装ELM的垃圾邮件检测器框架,该框架可借助我们使用袋装方法组合的多个ELM来识别SNS中的垃圾邮件。我们构建了两个最著名的SNS Twitter和Facebook的标记数据集,以评估我们框架的性能。评估结果表明,我们的框架在Twitter数据集和Facebook数据集上获得了更高的泛化性能,分别为99.01%和99.02%,而所需的训练时间分别为1.17 s和1.10s。 (C)2017 Elsevier B.V.保留所有权利。

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