Ensemble learning based anomaly detection for IoT cybersecurity via Bayesian hyperparameters sensitivity analysis

IF 3.9 4区 计算机科学 Q2 COMPUTER SCIENCE, INFORMATION SYSTEMS
Tin Lai, Farnaz Farid, Abubakar Bello, Fariza Sabrina
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引用次数: 0

Abstract

The Internet of Things (IoT) integrates more than billions of intelligent devices over the globe with the capability of communicating with other connected devices with little to no human intervention. IoT enables data aggregation and analysis on a large scale to improve life quality in many domains. In particular, data collected by IoT contain a tremendous amount of information for anomaly detection. The heterogeneous nature of IoT is both a challenge and an opportunity for cybersecurity. Traditional approaches in cybersecurity monitoring often require different kinds of data pre-processing and handling for various data types, which might be problematic for datasets that contain heterogeneous features. However, heterogeneous types of network devices can often capture a more diverse set of signals than a single type of device readings, which is particularly useful for anomaly detection. In this paper, we present a comprehensive study on using ensemble machine learning methods for enhancing IoT cybersecurity via anomaly detection. Rather than using one single machine learning model, ensemble learning combines the predictive power from multiple models, enhancing their predictive accuracy in heterogeneous datasets rather than using one single machine learning model. We propose a unified framework with ensemble learning that utilises Bayesian hyperparameter optimisation to adapt to a network environment that contains multiple IoT sensor readings. Experimentally, we illustrate their high predictive power when compared to traditional methods.

Abstract Image

通过贝叶斯超参数敏感性分析进行基于集合学习的物联网网络安全异常检测
物联网(IoT)整合了全球数十亿台智能设备,这些设备能够与其他联网设备进行通信,几乎无需人工干预。物联网可以进行大规模的数据汇总和分析,从而提高许多领域的生活质量。特别是,物联网收集的数据包含大量异常检测信息。物联网的异构性对于网络安全来说既是挑战也是机遇。传统的网络安全监测方法通常需要对各种数据类型进行不同的数据预处理和处理,这可能会给包含异构特征的数据集带来问题。然而,与单一类型的设备读数相比,异构类型的网络设备往往能捕捉到更多样化的信号,这对于异常检测尤其有用。在本文中,我们全面研究了如何使用集合机器学习方法通过异常检测增强物联网网络安全。与使用单一的机器学习模型相比,集合学习结合了多个模型的预测能力,提高了它们在异构数据集中的预测准确性。我们提出了一个利用贝叶斯超参数优化的集合学习统一框架,以适应包含多个物联网传感器读数的网络环境。通过实验,我们证明了它们与传统方法相比所具有的高预测能力。
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
Cybersecurity
Cybersecurity Computer Science-Information Systems
CiteScore
7.30
自引率
0.00%
发文量
77
审稿时长
9 weeks
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