Development and evaluation of ensemble learning models for detection of DDOS attacks in IoT

Yıldıran Yılmaz, Selim Buyrukoğlu
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Abstract

Internet of Things that process tremendous confidential data have difficulty performing traditional security algorithms, thus their security is at risk. The security tasks to be added to these devices should be able to operate without disturbing the smooth operation of the system so that the availability of the system will not be impaired. While various attack detection systems can detect attacks with high accuracy rates, it is often impossible to integrate them into IoT devices. Therefore, in this work, the new DDOS detection models using feature selection and learning algorithms jointly are proposed to detect DDOS attacks, which is the most common type encountered by IoT networks. The data set consisting of 79 features in total created for the detection of DDOS attacks was minimized by selecting the two most significant features. Evaluation results confirm that the DDOS attack can be detected with high accuracy and less memory usage by the base models compared to complex learning methods such as bagging and boosting models. As a result, the findings demonstrate the feasibility of the base models, for the IoT DDOS detection task, due to their application performance.
物联网中用于检测DDOS攻击的集成学习模型的开发和评估
处理大量机密数据的物联网难以执行传统的安全算法,其安全性存在风险。要添加到这些设备上的安全任务应能够在不干扰系统正常运行的情况下运行,以免影响系统的可用性。虽然各种攻击检测系统可以以高准确率检测攻击,但通常不可能将其集成到物联网设备中。因此,本文提出了结合特征选择和学习算法的新型DDOS检测模型,用于检测物联网网络中最常见的DDOS攻击类型。通过选择两个最重要的特征,将为检测DDOS攻击创建的总共由79个特征组成的数据集最小化。评估结果证实,与bagging和boosting模型等复杂的学习方法相比,基础模型能够以较高的准确率检测到DDOS攻击,并且占用的内存较少。因此,由于其应用性能,研究结果证明了基本模型对于物联网DDOS检测任务的可行性。
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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