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Bubble-net hunting strategy of whales based optimized feature selection for e-mail classification

机译:基于鲸鱼的泡泡网狩猎策略用于邮件分类的优化特征选择

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Spam E-mailis a kind of electronic spam in which unsolicited messages are sent by E-mail. It is the most severe problem world-wide for decades. One of the best approach to identify spam E-mails is filtering E-mails by classification.In many applications feature selection is the most widely used and essential task in many classification techniques to reduce the dimensionality of feature space. In this paper a Nature Inspired Meta-Heuristic Algorithm, that exploits the SVM principles for finding optimized structures of the Enron-Spam dataset having high similarity, is proposed. We adopted the WOA to obtain an optimal feature subset for E-mail classification.Four different kernel functions are exploited, that includes Linear, Quadratic, Polynomial and RBF in classification to test the best kernel function for SVM. Different evaluation measurements such as Precision, Accuracy, Recall and F-measure are calculated to find the performance of the proposed technique.The investigated results are analysed and compared with those from other techniques published in spam E-mails filtering. All the analysed and compared results show that proposed technique is very competitive for E-mail classification.
机译:垃圾邮件是一种电子垃圾邮件,通过电子邮件发送不请自来的邮件。这是数十年来全球最严重的问题。识别垃圾邮件的最佳方法之一是按分类过滤电子邮件。在许多应用程序中,为了减少特征空间的维数,特征选择是许多分类技术中使用最广泛,最基本的任务。本文提出了一种自然启发式元启发式算法,该算法利用支持向量机原理寻找具有高度相似性的安然垃圾邮件数据集的优化结构。我们采用WOA来获得用于电子邮件分类的最佳特征子集。利用四种不同的内核函数,包括线性,二次方,多项式和RBF进行分类,以测试SVM的最佳内核函数。计算精度,准确性,召回率和F度量等不同的评估度量以发现所提出技术的性能。将研究结果进行分析,并与垃圾邮件过滤中发布的其他技术进行比较。所有的分析和比较结果表明,所提出的技术在电子邮件分类方面非常有竞争力。

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