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Design of multi-view based email classification for IoT systems via semi-supervised learning

机译:通过半监督学习为物联网系统基于多视图的电子邮件分类设计

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摘要

Suspicious emails are one big threat for Internet of Things (IoT) security, which aim to induce users to click and then redirect them to a phishing webpage. To protect IoT systems, email classification is an essential mechanism to classify spam and legitimate emails. In the literature, most email classification approaches adopt supervised learning algorithms that require a large number of labeled data for classifier training. However, data labeling is very time consuming and expensive, making only a very small set of data available in practice, which would greatly degrade the effectiveness of email classification. To mitigate this problem, in this work, we develop an email classification approach based on multi-view disagreement-based semi-supervised learning. The idea behind is that multi-view method can offer richer information for classification, which is often ignored by the literature. The use of semi-supervised learning can help leverage both labeled and unlabeled data. In the evaluation, we investigate the performance of our proposed approach with two datasets and in a real network environment. Experimental results demonstrate that the use of multi-view data can achieve more accurate email classification than the use of single-view data, and that our approach is more effective as compared to several existing similar algorithms.
机译:可疑电子邮件是物联网(IoT)安全的一大威胁,其目的是诱使用户单击,然后将其重定向到网络钓鱼网页。为了保护物联网系统,电子邮件分类是对垃圾邮件和合法电子邮件进行分类的基本机制。在文献中,大多数电子邮件分类方法采用有监督的学习算法,该算法需要大量标记数据才能进行分类器训练。但是,数据标记非常耗时且昂贵,在实践中仅使非常少的一组数据可用,这将大大降低电子邮件分类的有效性。为了减轻这个问题,在这项工作中,我们开发了一种基于基于多视图分歧的半监督学习的电子邮件分类方法。背后的想法是,多视图方法可以提供更丰富的分类信息,这在文献中经常被忽略。半监督学习的使用可以帮助利用标记和未标记的数据。在评估中,我们在实际的网络环境中调查了我们提出的具有两个数据集的方法的性能。实验结果表明,与使用单视图数据相比,使用多视图数据可以实现更准确的电子邮件分类,并且与几种现有的类似算法相比,我们的方法更有效。

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