A Trust Aware Behavioral Based Intrusion Detection in Cloud Environment Using Ensemble Service Centric Featured Neural Network

Naeem Ahmed, R. Vijaya Durga
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引用次数: 1

Abstract

The modern environment development comes under internet of service access for various purpose for doing communication. The cloud centric services are distributed to the user by access via the network. By the nature of communication be affected by various intrusion by accessing the services during wrongly manner by the intruders. The Advance Intrusion Detection System (AIDS) make effective monitoring by accessing the user service log to find the intrusion, but the prediction was not produce accuracy because of dimensionality features affect the identification of user behavior. To resolve this problem, we propose a Trust Aware Behavioral based Intrusion detection System (TABIS) to predict the user behavioral features related to malicious activity during the service of access. The system monitors the activity of the User Service Access Rate (USAR) to estimate the Trust Factor Rate (TFR). The features are selected based on mutual activity using Ensemble Service Centric Feature Selection (ESCFS) by accessing the service logs to choose the relative features. Based on the estimated trust factor weighting the features are selected and trained into Sigmoid Recurrent Neural Network (SRNN) to classifying the risk of evaluation in intrusion by class by category. The proposed system produce high intrusion detection rate as well produce best precision, recall, classification accuracy than any other methods.
基于集成服务中心特征神经网络的云环境下信任感知行为入侵检测
现代环境的发展是在互联网的服务接入下进行各种目的的交流。以云为中心的服务通过网络访问分发给用户。由于通信的性质,攻击者会以错误的方式访问服务,从而受到各种入侵的影响。高级入侵检测系统(advanced Intrusion Detection System, AIDS)通过访问用户服务日志进行有效监控,发现入侵行为,但由于维数特征影响了对用户行为的识别,导致预测不准确。为了解决这一问题,我们提出了一种基于信任感知行为的入侵检测系统(TABIS)来预测访问服务过程中与恶意活动相关的用户行为特征。系统监控用户服务访问率(USAR)的活动,以估计信任因子率(TFR)。使用以服务为中心的集成功能选择(ESCFS),通过访问服务日志选择相关功能,基于相互活动选择功能。在估计信任因子权重的基础上,选择特征并训练到Sigmoid递归神经网络(SRNN)中,对入侵评估风险进行分类。该方法不仅具有较高的入侵检测率,而且具有较好的准确率、查全率和分类准确率。
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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