Detecting Attacks on IoT Devices using Featureless 1D-CNN

Arshiya Khan, Chase Cotton
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引用次数: 6

Abstract

The generalization of deep learning has helped us, in the past, address challenges such as malware identification and anomaly detection in the network security domain. However, as effective as it is, scarcity of memory and processing power makes it difficult to perform these tasks in Internet of Things (IoT) devices. This research finds an easy way out of this bottleneck by depreciating the need for feature engineering and subsequent processing in machine learning techniques. In this study, we introduce a Featureless machine learning process to perform anomaly detection. It uses unprocessed byte streams of packets as training data. Featureless machine learning enables a low cost and low memory time-series analysis of network traffic. It benefits from eliminating the significant investment in subject matter experts and the time required for feature engineering.
使用无特征1D-CNN检测对物联网设备的攻击
过去,深度学习的泛化帮助我们解决了网络安全领域的恶意软件识别和异常检测等挑战。然而,尽管它很有效,但内存和处理能力的稀缺使得在物联网(IoT)设备中执行这些任务变得困难。本研究通过贬低机器学习技术对特征工程和后续处理的需求,找到了解决这一瓶颈的简单方法。在这项研究中,我们引入了一个无特征的机器学习过程来进行异常检测。它使用数据包的未处理字节流作为训练数据。无特征的机器学习使网络流量的低成本和低内存时间序列分析成为可能。它的好处在于消除了对主题专家的大量投资和特征工程所需的时间。
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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