The increase in people's use of mobile messaging services has led to the spread of social engineering attacks like phishing, considering that spam text is one of the main factors in the dissemination of phishing attacks to steal sensitive data such as credit cards and passwords. In addition, rumors and incorrect medical information regarding the COVID-19 pandemic are widely shared on social media leading to people's fear and confusion. Thus, filtering spam content is vital to reduce risks and threats. Previous studies relied on machine learning and deep learning approaches for spam classification, but these approaches have two limitations. Machine learning models require manual feature engineering, whereas deep neural networks require a high computational cost. This paper introduces a dynamic deep ensemble model for spam detection that adjusts its complexity and extracts features automatically. The proposed model utilizes convolutional and pooling layers for feature extraction along with base classifiers such as random forests and extremely randomized trees for classifying texts into spam or legitimate ones. Moreover, the model employs ensemble learning procedures like boosting and bagging. As a result, the model achieved high precision, recall, f1-score and accuracy of 98.38%.
翻译:人们越来越多地使用移动信息服务,这导致社会工程攻击的蔓延,如钓鱼,考虑到垃圾邮件文本是传播钓鱼攻击以窃取信用卡和密码等敏感数据的主要因素之一,此外,关于COVID-19大流行的谣言和不正确的医疗信息在社交媒体上广为流传,导致人们的恐惧和困惑。因此,过滤垃圾邮件内容对于减少风险和威胁至关重要。以往的研究依靠机器学习和深入学习的方法来进行垃圾邮件分类,但这些方法有两个局限性。机器学习模式需要手工特征工程,而深神经网络则需要高计算成本。本文介绍了一种动态的深元素模型,用于检测垃圾邮件,以自动调整其复杂性和提取特征。拟议模型利用巨集层和集合层进行特征提取,同时使用诸如随机森林和极随机化的树木等基础分类,将文本分类成垃圾邮件或合法文本。此外,模型还采用诸如提压和包装等混合学习程序。结果是,模型实现了高度精确性、回顾、F1-38和精确性的98 %。