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Advances in spam detection for email spam, web spam, social network spam, and review spam: ML-based and nature-inspired-based techniques

机译:电子邮件垃圾邮件,Web垃圾邮件,社交网络垃圾邮件和评论垃圾邮件的垃圾邮件检测进展:基于ML和基于自然灵感的技术

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Despite the great advances in spam detection, spam remains a major problem that has affected the global economy enormously. Spam attacks are popularly perpetrated through different digital platforms with a large electronic audience, such as emails, microblogging websites (e.g. Twitter), social networks (e.g. Facebook), and review sites (e.g. Amazon). Different spam detection solutions have been proposed in the literature, however, Machine Learning (ML) based solutions are one of the most effective. Nevertheless, most ML algorithms have computational complexity problem, thus some studies introduced Nature Inspired (NI) algorithms to further improve the speed and generalization performance of ML algorithms. This study presents a survey of recent ML-based and NI-based spam detection techniques to empower the research community with information that is suitable for designing effective spam filtering systems for emails, social networks, microblogging, and review websites. The recent success and prevalence of deep learning show that it can be used to solve spam detection problems. Moreover, the availability of large-scale spam datasets makes deep learning and big data solutions (such as Mahout) very suitable for spam detection. Few studies explored deep learning algorithms and big data solutions for spam detection. Besides, most of the datasets used in the literature are either small or synthetically created. Therefore, future studies can consider exploring big data solutions, big datasets, and deep learning algorithms for building efficient spam detection techniques.
机译:尽管对垃圾邮件检测有很大进展,但垃圾邮件仍然是影响全球经济的主要问题。垃圾邮件攻击是普遍存在的不同数字平台,具有大型电子观众,例如电子邮件,微博网站(例如Twitter),社交网络(例如Facebook),以及评论网站(例如Amazon)。在文献中提出了不同的垃圾邮件检测解决方案,然而,基于机器学习(ML)的解决方案是最有效的。然而,大多数ML算法具有计算复杂性问题,因此一些研究介绍了自然启发(NI)算法,以进一步提高ML算法的速度和泛化性能。本研究提出了对近期ML的基于NI和NI的垃圾邮件检测技术的调查,以赋予研究群岛的信息,适合为电子邮件,社交网络,微博以及审查网站设计有效的垃圾邮件过滤系统。最近的深度学习的成功和普遍性表明它可以用来解决垃圾邮件检测问题。此外,大规模垃圾邮件数据集的可用性使得深度学习和大数据解决方案(如MAHOUT)非常适合垃圾邮件检测。很少有研究探索了深度学习算法和垃圾邮件检测的大数据解决方案。此外,文献中使用的大多数数据集是小或合成创建的。因此,未来的研究可以考虑探索大数据解决方案,大数据集和深度学习算法,以构建有效的垃圾邮件检测技术。

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