A Hybrid Intrusion Detection System for Smart Home Security Based on Machine Learning and User Behavior

Faisal Alghayadh, D. Debnath
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引用次数: 15

Abstract

With technology constantly becoming present in people’s lives, smart homes are increasing in popularity. A smart home system controls lighting, temperature, security camera systems, and appliances. These devices and sensors are connected to the internet, and these devices can easily become the target of attacks. To mitigate the risk of using smart home devices, the security and privacy thereof must be artificially smart so they can adapt based on user behavior and environments. The security and privacy systems must accurately analyze all actions and predict future actions to protect the smart home system. We propose a Hybrid Intrusion Detection (HID) system using machine learning algorithms, including random forest, X gboost, decision tree, K -nearest neighbors, and misuse detection technique.
基于机器学习和用户行为的智能家居安全混合入侵检测系统
随着技术不断出现在人们的生活中,智能家居越来越受欢迎。智能家居系统控制照明、温度、安全摄像头系统和电器。这些设备和传感器连接到互联网,这些设备很容易成为攻击的目标。为了降低使用智能家居设备的风险,其安全性和隐私必须是人工智能的,这样它们才能根据用户行为和环境进行调整。安全和隐私系统必须准确分析所有行动,并预测未来的行动,以保护智能家居系统。我们提出了一种使用机器学习算法的混合入侵检测(HID)系统,包括随机森林、X对象、决策树、K近邻和误用检测技术。
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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