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An optimization-based deep belief network for the detection of phishing e-mails

机译:文中针对深层信念网络检测网络钓鱼电子邮件

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Purpose Phishing is a serious cybersecurity problem, which is widely available through multimedia, such as e-mail and Short Messaging Service (SMS) to collect the personal information of the individual. However, the rapid growth of the unsolicited and unwanted information needs to be addressed, raising the necessity of the technology to develop any effective anti-phishing methods. Design/methodology/approach The primary intention of this research is to design and develop an approach for preventing phishing by proposing an optimization algorithm. The proposed approach involves four steps, namely preprocessing, feature extraction, feature selection and classification, for dealing with phishing e-mails. Initially, the input data set is subjected to the preprocessing, which removes stop words and stemming in the data and the preprocessed output is given to the feature extraction process. By extracting keyword frequency from the preprocessed, the important words are selected as the features. Then, the feature selection process is carried out using the Bhattacharya distance such that only the significant features that can aid the classification are selected. Using the selected features, the classification is done using the deep belief network (DBN) that is trained using the proposed fractional-earthworm optimization algorithm (EWA). The proposed fractional-EWA is designed by the integration of EWA and fractional calculus to determine the weights in the DBN optimally. Findings The accuracy of the methods, naive Bayes (NB), DBN, neural network (NN), EWA-DBN and fractional EWA-DBN is 0.5333, 0.5455, 0.5556, 0.5714 and 0.8571, respectively. The sensitivity of the methods, NB, DBN, NN, EWA-DBN and fractional EWA-DBN is 0.4558, 0.5631, 0.7035, 0.7045 and 0.8182, respectively. Likewise, the specificity of the methods, NB, DBN, NN, EWA-DBN and fractional EWA-DBN is 0.5052, 0.5631, 0.7028, 0.7040 and 0.8800, respectively. It is clear from the comparative table that the proposed method acquired the maximal accuracy, sensitivity and specificity compared with the existing methods. Originality/value The e-mail phishing detection is performed in this paper using the optimization-based deep learning networks. The e-mails include a number of unwanted messages that are to be detected in order to avoid the storage issues. The importance of the method is that the inclusion of the historical data in the detection process enhances the accuracy of detection.
机译:网络钓鱼是一种严重的网络安全目的问题,这是广泛使用多媒体,如电子邮件和短消息服务(SMS)收集个人信息个人的。主动的和不必要的信息需要得到解决,提高的必要性技术开发任何有效的反钓鱼方法。本研究的目的是设计和开发一个方法来防止网络钓鱼提出一种优化算法。方法包括四个步骤,即预处理,特征提取,特征选择和分类处理网络钓鱼电子邮件。是经过预处理,消除了吗停止在数据和文字和阻止预处理的输出特性提取的过程。频率预处理的重要词选为特征。特征选择过程是使用巴塔查里亚的距离,这样只有重要的特性,可以帮助分类选择。特性,分类进行使用深度信念网(DBN)训练使用拟议中的fractional-earthworm优化算法(EWA)。设计的集成EWA和分数DBN微积分来确定权重优化。朴素贝叶斯(NB), DBN,神经网络(NN),EWA-DBN分数EWA-DBN是0.5333,0.5455,分别为0.5556、0.5714和0.8571。灵敏度的方法、NB DBN, NN, EWA-DBN和部分EWA-DBN是0.4558,0.5631,0.7035,分别为0.7045和0.8182。特异性的方法、NB DBN, NN, EWA-DBN和部分EWA-DBN是0.5052,0.5631,0.7028,分别为0.7040和0.8800。该方法的比较表获得的最大精度、灵敏度和特异性与现有的方法相比。创意/值的电子邮件网络钓鱼检测执行摘要使用吗文中针对深度学习网络。电子邮件包括一些不必要的信息为了避免被揭发的存储问题。包容的历史数据检测过程的准确性提高检测。

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