Enhanced Intrusion Detection with LSTM-Based Model, Feature Selection, and SMOTE for Imbalanced Data

Q1 Mathematics
Hussein Ridha Sayegh, Wang Dong, Ali Mansour Al-madani
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引用次数: 0

Abstract

This study introduces a sophisticated intrusion detection system (IDS) that has been specifically developed for internet of things (IoT) networks. By utilizing the capabilities of long short-term memory (LSTM), a deep learning model renowned for its proficiency in modeling sequential data, our intrusion detection system (IDS) effectively discerns between regular network traffic and potential malicious attacks. In order to tackle the issue of imbalanced data, which is a prevalent concern in the development of intrusion detection systems (IDSs), we have integrated the synthetic minority over-sampling technique (SMOTE) into our approach. This incorporation allows our model to accurately identify infrequent incursion patterns. The rebalancing of the dataset is accomplished by SMOTE through the generation of synthetic samples belonging to the minority class. Various strategies, such as the utilization of generative adversarial networks (GANs), have been put forth in order to tackle the issue of data imbalance. However, SMOTE (synthetic minority over-sampling technique) presents some distinct advantages when applied to intrusion detection. The SMOTE is characterized by its simplicity and proven efficacy across diverse areas, including in intrusion detection. The implementation of this approach is straightforward and does not necessitate intricate adversarial training techniques such as generative adversarial networks (GANs). The interpretability of SMOTE lies in its ability to generate synthetic samples that are aligned with the properties of the original data, rendering it well suited for security applications that prioritize transparency. The utilization of SMOTE has been widely embraced in the field of intrusion detection research, demonstrating its effectiveness in augmenting the detection capacities of intrusion detection systems (IDSs) in internet of things (IoT) networks and reducing the consequences of class imbalance. This study conducted a thorough assessment of three commonly utilized public datasets, namely, CICIDS2017, NSL-KDD, and UNSW-NB15. The findings indicate that our LSTM-based intrusion detection system (IDS), in conjunction with the implementation of SMOTE to address data imbalance, outperforms existing methodologies in accurately detecting network intrusions. The findings of this study provide significant contributions to the domain of internet of things (IoT) security, presenting a proactive and adaptable approach to safeguarding against advanced cyberattacks. Through the utilization of LSTM-based deep learning techniques and the mitigation of data imbalance using SMOTE, our AI-driven intrusion detection system (IDS) enhances the security of internet of things (IoT) networks, hence facilitating the wider implementation of IoT technologies across many industries.
利用基于 LSTM 的模型、特征选择和 SMOTE 对不平衡数据进行增强型入侵检测
本研究介绍了一种专为物联网(IoT)网络开发的精密入侵检测系统(IDS)。我们的入侵检测系统(IDS)利用长短期记忆(LSTM)(一种深度学习模型,以擅长对顺序数据建模而闻名)的能力,有效地分辨出常规网络流量和潜在的恶意攻击。为了解决入侵检测系统(IDS)开发过程中普遍关注的不平衡数据问题,我们在方法中集成了合成少数过度采样技术(SMOTE)。这种整合使我们的模型能够准确识别不常见的入侵模式。SMOTE 通过生成属于少数群体的合成样本来实现数据集的再平衡。为了解决数据不平衡问题,人们提出了各种策略,如利用生成式对抗网络(GANs)。不过,SMOTE(合成少数群体过度采样技术)在应用于入侵检测时具有一些明显的优势。SMOTE 的特点是简单易用,而且在包括入侵检测在内的各个领域都证明了其有效性。这种方法的实施简单明了,不需要复杂的对抗训练技术,如生成对抗网络(GAN)。SMOTE 的可解释性在于它能够生成与原始数据属性一致的合成样本,因此非常适合优先考虑透明度的安全应用。在入侵检测研究领域,SMOTE 的使用已被广泛接受,它在增强物联网(IoT)网络中入侵检测系统(IDS)的检测能力和减少类不平衡的后果方面显示出了其有效性。本研究对 CICIDS2017、NSL-KDD 和 UNSW-NB15 这三个常用公共数据集进行了全面评估。研究结果表明,我们基于 LSTM 的入侵检测系统(IDS)结合 SMOTE 的实施来解决数据不平衡问题,在准确检测网络入侵方面优于现有方法。本研究的发现为物联网(IoT)安全领域做出了重大贡献,提出了一种积极主动、适应性强的方法来防范高级网络攻击。通过利用基于 LSTM 的深度学习技术和使用 SMOTE 缓解数据不平衡,我们的人工智能驱动入侵检测系统(IDS)增强了物联网(IoT)网络的安全性,从而促进了物联网技术在许多行业的广泛应用。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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来源期刊
Applied Sciences
Applied Sciences Mathematics-Applied Mathematics
CiteScore
6.40
自引率
0.00%
发文量
0
审稿时长
11 weeks
期刊介绍: APPS is an international journal. APPS covers a wide spectrum of pure and applied mathematics in science and technology, promoting especially papers presented at Carpato-Balkan meetings. The Editorial Board of APPS takes a very active role in selecting and refereeing papers, ensuring the best quality of contemporary mathematics and its applications. APPS is abstracted in Zentralblatt für Mathematik. The APPS journal uses Double blind peer review.
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