揭示异常:利用机器学习进行检测和洞察

Shubh Gupta, Sanoj Kumar, Karan Singh, Deepika Saini
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引用次数: 0

摘要

物联网(IoT)设备的兴起带来了安全风险的增加,强调了对有效异常检测系统的需求。以往的研究引入了动态投票分类器,以克服数据集不平衡造成的过拟合或不准确的准确性。本文介绍了一种新的物联网异常检测方法,该方法采用混合投票分类器,结合了多个机器学习模型。为解决过拟合和类权重问题,采用了一种自适应投票分类器,可根据准确性的最高偏好调整权重。开发中的投票系统提高了更精确分类器的有效性,增强了分类器组的整体能力。建议的组合分类器采用软投票方法,将逻辑回归、AdaBoost、梯度提升和多层感知器模型结合起来。为了开发和评估这种方法,我们使用了 CIC-IoT-2023 数据集,其中包含 7 个类别的 33 种物联网攻击。这一过程包括彻底的数据预处理和从 42 个可用属性库中选择特征。在二进制、8 类和 34 类分类任务中,该方法的性能与单个分类器进行了比较。结果凸显了混合模型的有效性。在 34 类问题中,它的准确率达到 98.95%,召回率达到 76.72%,F1 分数达到 72.01%,超过了所有单独模型的性能。在 8 类任务中,混合分类器达到了 99.39% 的准确率、90.89% 的召回率和 83.01% 的 F1 分数。这证明了混合方法在物联网异常检测方面的巨大潜力。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Unveiling anomalies: harnessing machine learning for detection and insights
The rise of Internet of Things (IoT) devices has brought about an increase in security risks, emphasizing the need for effective anomaly detection systems. Previous research introduced a dynamic voting classifier to overcome overfitting or inaccurate accuracies caused by dataset imbalance. This article introduces a new method for IoT anomaly detection that employs a hybrid voting classifier, which combines several machine learning models. To solve the overfitting and class weight issues, an adaptive voting classifier is used that adjusts weights according to the highest preference for accuracy. The developing voting system increases the effectiveness of more accurate classifiers, enhancing the group's overall capability. A proposed combined classifier combines Logistic Regression, AdaBoost, Gradient Boosting, and Multi-Layer Perceptron models using a soft voting method. To develop and assess this method, the CIC-IoT-2023 dataset is utilized, which contains 33 types of IoT attacks across 7 categories. This process includes thorough data preprocessing and feature selection from a pool of 42 available attributes. The performance of this approach is measured against individual classifiers across binary, 8-class, and 34-class classification tasks. The results highlight the effectiveness of the hybrid model. It achieves 98.95% accuracy, 76.72% recall, and 72.01% F1-score in the 34-class problem, surpassing the performance of all individual models. For the 8-class task, the hybrid classifier attains 99.39% accuracy, 90.89% recall, and an 83.01% F1-score. This demonstrates the high potential of the hybrid approach for IoT anomaly detection.
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