An Artificial Neural Network Autoencoder for Insider Cyber Security Threat Detection

IF 2.8 Q2 COMPUTER SCIENCE, INFORMATION SYSTEMS Future Internet Pub Date : 2023-11-23 DOI:10.3390/fi15120373
Karthikeyan Saminathan, Sai Tharun Reddy Mulka, Sangeetha Damodharan, Rajagopal Maheswar, J. Lorincz
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Abstract

The COVID-19 pandemic made all organizations and enterprises work on cloud platforms from home, which greatly facilitates cyberattacks. Employees who work remotely and use cloud-based platforms are chosen as targets for cyberattacks. For that reason, cyber security is a more concerning issue and is now incorporated into almost every smart gadget and has become a prerequisite in every software product and service. There are various mitigations for external cyber security attacks, but hardly any for insider security threats, as they are difficult to detect and mitigate. Thus, insider cyber security threat detection has become a serious concern in recent years. Hence, this paper proposes an unsupervised deep learning approach that employs an artificial neural network (ANN)-based autoencoder to detect anomalies in an insider cyber security attack scenario. The proposed approach analyzes the behavior of the patterns of users and machines for anomalies and sends an alert based on a set security threshold. The threshold value set for security detection is calculated based on reconstruction errors that are obtained through testing the normal data. When the proposed model reconstructs the user behavior without generating sufficient reconstruction errors, i.e., no more than the threshold, the user is flagged as normal; otherwise, it is flagged as a security intruder. The proposed approach performed well, with an accuracy of 94.3% for security threat detection, a false positive rate of 11.1%, and a precision of 89.1%. From the obtained experimental results, it was found that the proposed method for insider security threat detection outperforms the existing methods in terms of performance reliability, due to implementation of ANN-based autoencoder which uses a larger number of features in the process of security threat detection.
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用于内部网络安全威胁检测的人工神经网络自动编码器
COVID-19 大流行使得所有组织和企业都在家使用云平台工作,这为网络攻击提供了极大的便利。远程工作和使用云平台的员工被选为网络攻击的目标。因此,网络安全是一个更加令人担忧的问题,现在几乎所有的智能小工具都集成了网络安全,网络安全已成为每个软件产品和服务的先决条件。外部网络安全攻击有各种缓解措施,但内部安全威胁几乎没有任何缓解措施,因为它们难以检测和缓解。因此,内部网络安全威胁检测已成为近年来备受关注的问题。因此,本文提出了一种无监督深度学习方法,采用基于人工神经网络(ANN)的自动编码器来检测内部网络安全攻击场景中的异常情况。所提出的方法会分析用户和机器的异常行为模式,并根据设定的安全阈值发送警报。为安全检测设定的阈值是根据测试正常数据获得的重构误差计算得出的。当提议的模型重构用户行为时,不会产生足够的重构误差,即不超过阈值,用户就会被标记为正常用户;否则,就会被标记为安全入侵者。所提出的方法性能良好,安全威胁检测的准确率为 94.3%,误报率为 11.1%,精确率为 89.1%。从获得的实验结果来看,由于基于 ANN 的自动编码器在安全威胁检测过程中使用了更多的特征,因此所提出的内部安全威胁检测方法在性能可靠性方面优于现有方法。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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来源期刊
Future Internet
Future Internet Computer Science-Computer Networks and Communications
CiteScore
7.10
自引率
5.90%
发文量
303
审稿时长
11 weeks
期刊介绍: Future Internet is a scholarly open access journal which provides an advanced forum for science and research concerned with evolution of Internet technologies and related smart systems for “Net-Living” development. The general reference subject is therefore the evolution towards the future internet ecosystem, which is feeding a continuous, intensive, artificial transformation of the lived environment, for a widespread and significant improvement of well-being in all spheres of human life (private, public, professional). Included topics are: • advanced communications network infrastructures • evolution of internet basic services • internet of things • netted peripheral sensors • industrial internet • centralized and distributed data centers • embedded computing • cloud computing • software defined network functions and network virtualization • cloud-let and fog-computing • big data, open data and analytical tools • cyber-physical systems • network and distributed operating systems • web services • semantic structures and related software tools • artificial and augmented intelligence • augmented reality • system interoperability and flexible service composition • smart mission-critical system architectures • smart terminals and applications • pro-sumer tools for application design and development • cyber security compliance • privacy compliance • reliability compliance • dependability compliance • accountability compliance • trust compliance • technical quality of basic services.
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