VANET攻击识别的特征工程方法研究

I. Bolodurina, D. Parfenov, L. Grishina
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引用次数: 0

摘要

本文讨论了通过使用特征工程方法扩展特征空间来提高机器学习方法在识别VANET网络攻击中的效率的问题。这项工作的主要思想是使用预训练的模型(如用于分类的支持向量机和用于聚类的Kmeans)来生成数据集的新特征。在使用KNN、Random Forest、XGB、CatBoost、LGBM等机器学习方法解决攻击识别问题时,对生成特征的效率进行了分析。计算实验表明,当包含基于svm的特征时,大多数集成机器学习方法的准确率平均提高了0.137%,而基于Kmeans添加聚类数的平均效率提高了0.493%。同时,对于所研究的机器学习方法,性能略有下降。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Investigation of Feature Engineering Methods for Identifying Attacks in the VANET
This article discusses the problem of increasing the efficiency of machine learning methods in identifying attacks in the VANET network by expanding the feature space using Feature Engineering methods. The main idea of this work is to generate new features of a dataset using pre-trained models such as support vector machines for classification and Kmeans for clustering. The analysis of the efficiency of the generated features was carried out when solving the problem of identifying attacks using such machine learning methods as KNN, Random Forest, XGB, CatBoost, LGBM. Computational experiments showed that when SVM-based features were included, most ensemble machine learning methods improved accuracy by an average of 0.137% while adding a cluster number based on Kmeans resulted in an average efficiency improvement of 0.493%. At the same time, for the studied machine learning methods, the performance decreased slightly.
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