通过基于机器学习的垃圾邮件检测加强物联网安全

R. Chatrapathi, M. Ramkumar, D. Jayakumar, R.Pooja Sri
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引用次数: 0

摘要

数以百万计的传感器和执行器组成了物联网(IoT),这是一个快速增长的网络,通过有线或无线通信渠道传输数据。仅在过去十年中,物联网就有了显著增长,预计到2023年将有430亿台联网设备投入使用。在这种情况下,机器学习算法对于建立基于生物技术的安全性和授权以及发现异常以提高物联网设备的安全性和可用性可能非常有用。然而,攻击者经常认为机器学习技术可能是复杂物联网设备的弱点。为了保护物联网设备,该研究建议采用机器学习来识别垃圾邮件。在物联网中用于垃圾邮件检测的机器学习框架是实现这一目标的建议方法。该框架使用各种度量和广泛的输入特征集评估五种可选择的机器学习模型。每个模型使用改进的输入特征生成垃圾邮件分数。基于多个变量,该分数显示了物联网设备的可信赖程度。IoT-23数据集用于验证所提出的方法。结果表明,建议的解决方案在有效性方面优于目前的方法。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Reinforcing IoT Security through Machine Learning Based Spam Detection
Millions of linked sensors and actuators make up the Internet of Things (IoT), a fast-growing network that transmits data over wired or wireless communication channels. IoT has grown significantly in the last ten years alone, with an estimated 43 billion connected devices predicted to be in use by 2023. Machine learning algorithms may be quite useful in this situation for establishing biotechnology-based security and authorization as well as for spotting abnormalities to improve the security and usability of IoT devices. Attackers frequently consider machine learning techniques to be possible weaknesses in sophisticated IoT devices, though. In order to secure IoT devices, the research suggests employing machine learning to identify spam. A machine-learning framework for spam detection in an IoT is the suggested method for achieving this goal. This framework assesses five alternative machine learning models using various measures and a wide range of input feature sets. A spam score is generated by each model using the improved input characteristics. Based on a number of variables, this score shows the degree of trustworthiness of an IoT device. The IoT-23 dataset is used to validate the proposed method. The findings show that the suggested solution is superior to the current approaches in terms of effectiveness.
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