Enhancement of email spam detection using improved deep learning algorithms for cyber security

Kadam Vikas Samarthrao, Vandana Milind Rohokale
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引用次数: 6

Abstract

Email has sustained to be an essential part of our lives and as a means for better communication on the internet. The challenge pertains to the spam emails residing a large amount of space and bandwidth. The defect of state-of-the-art spam filtering methods like misclassification of genuine emails as spam (false positives) is the rising challenge to the internet world. Depending on the classification techniques, literature provides various algorithms for the classification of email spam. This paper tactics to develop a novel spam detection model for improved cybersecurity. The proposed model involves several phases like dataset acquisition, feature extraction, optimal feature selection, and detection. Initially, the benchmark dataset of email is collected that involves both text and image datasets. Next, the feature extraction is performed using two sets of features like text features and visual features. In the text features, Term Frequency-Inverse Document Frequency (TF-IDF) is extracted. For the visual features, color correlogram and Gray-Level Co-occurrence Matrix (GLCM) are determined. Since the length of the extracted feature vector seems to the long, the optimal feature selection process is done. The optimal feature selection is performed by a new meta-heuristic algorithm called Fitness Oriented Levy Improvement-based Dragonfly Algorithm (FLI-DA). Once the optimal features are selected, the detection is performed by the hybrid learning technique that is composed of two deep learning approaches named Recurrent Neural Network (RNN) and Convolutional Neural Network (CNN). For improving the performance of existing deep learning approaches, the number of hidden neurons of RNN and CNN is optimized by the same FLI-DA. Finally, the optimized hybrid learning technique having CNN and RNN classifies the data into spam and ham. The experimental outcomes show the ability of the proposed method to perform the spam email classification based on improved deep learning.
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利用改进的网络安全深度学习算法增强垃圾邮件检测
电子邮件一直是我们生活中必不可少的一部分,也是在互联网上更好地沟通的一种手段。问题在于垃圾邮件占用了大量的空间和带宽。最先进的垃圾邮件过滤方法的缺陷,如将真实电子邮件错误地分类为垃圾邮件(误报),是互联网世界面临的日益严峻的挑战。根据分类技术的不同,文献提供了各种分类电子邮件垃圾邮件的算法。本文提出了一种新的垃圾邮件检测模型,以提高网络安全。该模型包括数据集采集、特征提取、最优特征选择和检测等几个阶段。首先,收集电子邮件的基准数据集,其中包括文本和图像数据集。接下来,使用文本特征和视觉特征两组特征进行特征提取。在文本特征中,提取词频率-逆文档频率(TF-IDF)。对于视觉特征,确定颜色相关图和灰度共生矩阵。由于提取的特征向量的长度似乎较长,因此进行了最优特征选择过程。最优特征选择采用一种新的元启发式算法——基于适应度的Levy改进蜻蜓算法(FLI-DA)。一旦选择了最优特征,就通过混合学习技术进行检测,该技术由两种深度学习方法组成,即循环神经网络(RNN)和卷积神经网络(CNN)。为了提高现有深度学习方法的性能,RNN和CNN的隐藏神经元数量通过相同的fl - da进行优化。最后,利用优化后的CNN和RNN混合学习技术,将数据分为spam和ham两类。实验结果表明,该方法能够基于改进的深度学习对垃圾邮件进行分类。
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