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An Ensemble Deep Neural Network Model for Onion-Routed Traffic Detection to Boost Cloud Security

机译:洋葱路由流量检测的集合深神经网络模型,提升云安全

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摘要

Anonymous network communication using onion routing networks such as Tor are used to guard the privacy of sender by encrypting all messages in the overlapped network. These days most of the onion routed communications are not only used for decent cause but also cyber offenders are ill-using onion routings for scanning the ports, hacking, exfiltration of theft data, and other types of online frauds. These cyber-crime attempts are very vulnerable for cloud security. Deep learning is highly effective machine learning method for prediction and classification. Ensembling multiple models is an influential approach to increase the efficiency of learning models. In this work, an ensemble deep learning-based classification model is proposed to detect communication through Tor and non-Tor network. Three different deep learning models are combined to achieve the ensemble model. The proposed model is also compared with other machine learning models. Classification results shows the superiority of the proposed model than other models.
机译:诸如Tor等洋葱路由网络的匿名网络通信用于通过加密重叠网络中的所有消息来保护发件人的隐私。如今,大多数洋葱路由通信不仅用于体面的原因,而且网络违法者也没有使用洋葱路由,用于扫描端口,黑客攻击,盗窃数据和其他类型的在线欺诈。这些网络犯罪的尝试对于云安全非常脆弱。深度学习是用于预测和分类的高效机器学习方法。合并多种模型是一种提高学习模型效率的有影响力的方法。在这项工作中,提出了一种基于整体基于深度学习的分类模型来通过TOR和非TOT网络来检测通信。结合了三种不同的深度学习模型来实现集合模型。拟议的模型也与其他机器学习模型进行比较。分类结果显示了所提出的模型的优越性而不是其他模型。

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