计算机科学
异常检测
网络犯罪
计算机安全
分析
领域(数学)
鉴定(生物学)
网络安全
社会化媒体
GSM演进的增强数据速率
深信不疑网络
欺骗
社交网络(社会语言学)
数据科学
万维网
深度学习
人工智能
互联网
生物
社会心理学
纯数学
植物
数学
心理学
作者
S. Deepa,A. Umamageswari,S. Neelakandan,Hanumanthu Bhukya,I. V. Sai Lakshmi Haritha,Manjula Shanbhog
标识
DOI:10.1142/s0218843023500168
摘要
Machine learning (ML) is currently a crucial tool in the field of cyber security. Through the identification of patterns, the mapping of cybercrime in real time, and the execution of in-depth penetration tests, ML is able to counter cyber threats and strengthen security infrastructure. Security in any organization depends on monitoring and analyzing user actions and behaviors. Due to the fact that it frequently avoids security precautions and does not trigger any alerts or flags, it is much more challenging to detect than traditional malicious network activity. ML is an important and rapidly developing anomaly detection field in order to protect user security and privacy, a wide range of applications, including various social media platforms, have incorporated cutting-edge techniques to detect anomalies. A social network is a platform where various social groups can interact, express themselves, and share pertinent content. By spreading propaganda, unwelcome messages, false information, fake news, and rumours, as well as by posting harmful links, this social network also encourages deviant behavior. In this research, we introduce Deep Belief Network (DBN) with Triple DES, a hybrid approach to anomaly detection in unbalanced classification. The results show that the DBN-TDES model can typically detect anomalous user behaviors that other models in anomaly detection cannot.
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