Security issues are threatened in various types of networks, especially in the Internet of Things (IoT) environment that requires early detection. IoT is the network of real-time devices like home automation systems and can be controlled by open-source android devices, which can be an open ground for attackers. Attackers can access the network, initiate a different kind of security breach, and compromises network control. Therefore, timely detecting the increasing number of sophisticated malware attacks is the challenge to ensure the credibility of network protection. In this regard, we have developed a new malware detection framework, Deep Squeezed-Boosted and Ensemble Learning (DSBEL), comprised of novel Squeezed-Boosted Boundary-Region Split-Transform-Merge (SB-BR-STM) CNN and ensemble learning. The proposed S.T.M. block employs multi-path dilated convolutional, Boundary, and regional operations to capture the homogenous and heterogeneous global malicious patterns. Moreover, diverse feature maps are achieved using transfer learning and multi-path-based squeezing and boosting at initial and final levels to learn minute pattern variations. Finally, the boosted discriminative features are extracted from the developed deep SB-BR-STM CNN and provided to the ensemble classifiers (SVM, M.L.P., and AdaboostM1) to improve the hybrid learning generalization. The performance analysis of the proposed DSBEL framework and SB-BR-STM CNN against the existing techniques have been evaluated by the IOT_Malware dataset on standard performance measures. Evaluation results show progressive performance as 98.50% accuracy, 97.12% F1-Score, 91.91% MCC, 95.97 % Recall, and 98.42 % Precision. The proposed malware analysis framework is helpful for the timely detection of malicious activity and suggests future strategies.
翻译:在各种网络中,特别是在需要早期检测的互联网(IoT)环境中,安全问题受到威胁。IoT是像家庭自动化系统这样的实时装置网络,可以由开放源码和机器人装置控制,这些装置可以对攻击者开放。攻击者可以进入网络,启动不同种类的安全漏洞,并破坏网络控制。因此,及时发现日益复杂的恶意袭击数量是确保网络保护可信度的挑战。在这方面,我们开发了新的恶意检测框架(Deep Squeezed-bosted and Ensemble Learning (DSBEL)),由新型的Squeezed-bored Liber-Regiment-Trading-Tradif-Merge(SB-BR-STM)系统(SB-BR-S-STM(S-BR-STM-STM)系统可是一个开放的场所。拟议的S.T.M.M.要及时发现复杂和混杂的全球恶意模式。此外,通过传输学习、多路基的Drize-quenal-Deal S-deS-lish-deal-deal-deal 和S-deal-deal-deal-deal-deal-de-deal-deal-deal-deal laudal madeal laudal disal dal disal 提供S.