基于物联网的基于预测学习方案的数字文档恶意软件识别机制

K. Radha, G. Sivagamidevi, N. Juliet, S. Niranjana, Nimmalaharathi Nimmalaharathi, G. Dhanalakshmi
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引用次数: 0

摘要

识别恶意软件的能力对于确保计算机网络的安全至关重要。然而,目前使用的基于签名的技术不足以识别零日攻击和多态感染。这就是为什么我们需要使用机器学习的检测方法。恶意软件威胁的扩散和复杂程度已经将自动识别恶意软件的问题提升到网络安全讨论的前沿。使用传统的恶意软件检测技术手动分析程序中的所有恶意软件是费力且资源密集的。互联网的普及导致使用物联网设备的人数迅速增加。随着物联网设备存储容量的增长,恶意软件攻击变得越来越普遍;因此,检测物联网设备中的恶意软件已成为一个紧迫的问题。为了识别物联网设备中的恶意软件,我们提出了一种基于深度学习的集成分类方法。对于恶意软件的识别,我们采用了ANN和LSTM输出。我们建议的技术在标准数据集上达到99.49%的平均准确率,高于最先进的方法的准确率。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
An IoT enabled Malware Identification Mechanism over Digital Documents using Predictive Learning Scheme
The ability to identify malicious software is crucial to ensuring the safety of computer networks. Nevertheless, signature-based technologies now in use are inadequate for identifying zero-day assaults and polymorphic infections. That's why we need detection methods that use machine learning. The proliferation and sophistication of malware threats have elevated the problem of automated malware identification to the forefront of network security discussions. Manually analyzing all malware in a programme using conventional malware detection techniques is laborious and resource-intensive. The proliferation of the internet has led to a meteoric rise in the number of people using IoT devices. Malware assaults are growing more common as the storage capacity of IoT devices grows; as a result, detecting malware in IoT devices has become a pressing concern. For identifying malware in IoT devices, we present an ensemble categorization approach based on deep learning. For the identification of malware, we employ ANN and LSTM outputs. Our suggested technique achieves an average accuracy of 99.49% on standard datasets, which is higher than the accuracy of state-of-the-art methods.
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