An Enhanced Hybrid Deep Learning Model to Enhance Network Intrusion Detection Capabilities for Cybersecurity

Abhijit Das, Shobha N, Natesh M, Gyanendra Tiwary, Karthik V
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Abstract

Recently, we have noticed tremendous growth in the field of Information Technology. This increased growth has proliferated the use of new technologies and continued advancement of networking systems. These systems are widely adopted for real-time online and offline tasks. Due to this growth in information technology, maintaining security has gained huge attention as these systems are vulnerable to various attacks. In this context, an Intrusion Detection System (IDS) plays an important role in ensuring security by detecting and preventing suspicious activities within the network. However, as technology is overgrowing, malicious activities are also increasing. Moreover, legacy IDS methods cannot handle new threats, such as traditional signature-based methods requiring a predefined rule set to detect malicious activity. Also, several new methods have been proposed earlier to address security-related issues; however, the performance of these methods is limited due to poor attack detection accuracy and increased false positive rates. In this work, we propose and compare different deep-learning (DL) models that can be used to construct IDSs to provide network security. Details on convolutional neural networks (CNNs), Multilayer Perceptron (MLP), and long short-term memories (LSTMs) are introduced. A discussion of the outcomes achieved follows an assessment of the proposed DL model known as the FOA-CNN-LSTM technique. Comparisons are made between the suggested models and other machine-learning methods. This work presents a deep-learning approach based on hybrid CNN-LSTM with Fruit fly Optimization Algorithm (FOA) by ensemble techniques to distinguish between normal and abnormal behaviors.
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增强混合深度学习模型,提高网络安全的网络入侵检测能力
最近,我们注意到信息技术领域取得了巨大的发展。这种增长促进了新技术的使用和网络系统的不断进步。这些系统被广泛用于实时在线和离线任务。由于信息技术的发展,这些系统很容易受到各种攻击,因此维护其安全性受到了极大的关注。在这种情况下,入侵检测系统(IDS)通过检测和防止网络中的可疑活动,在确保安全方面发挥着重要作用。然而,随着技术的不断发展,恶意活动也在不断增加。此外,传统的入侵检测系统方法无法应对新的威胁,例如传统的基于签名的方法需要预定义的规则集来检测恶意活动。此外,早些时候还提出了几种新方法来解决与安全相关的问题,但由于攻击检测准确率低和误报率增加,这些方法的性能受到了限制。在这项工作中,我们提出并比较了不同的深度学习(DL)模型,这些模型可用于构建 IDS,以提供网络安全。文中详细介绍了卷积神经网络(CNN)、多层感知器(MLP)和长短期记忆(LSTM)。在对被称为 FOA-CNN-LSTM 技术的拟议 DL 模型进行评估后,对取得的成果进行了讨论。还对所建议的模型和其他机器学习方法进行了比较。本作品提出了一种基于混合 CNN-LSTM 与果蝇优化算法(FOA)的深度学习方法,通过集合技术来区分正常和异常行为。
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