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Bayesian Classifier and Snort based network intrusion detection system in cloud computing

机译:云计算中贝叶斯分类器和Snort基于Snort的网络入侵检测系统

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One of the major security issues in cloud computing is to protect against network intrusions that affect confidentiality, availability and integrity of Cloud resources and offered services. To address this issue, we design and integrate Bayesian Classifier and Snort based network intrusion detection system (NIDS) in Cloud. This framework aims to detect network intrusions in Cloud environment with low false positives and affordable computational cost. To ensure feasibility of our NIDS module in Cloud, we evaluate performance and quality results on KDD'99 experimental dataset.
机译:云计算中的主要安全问题之一是防止影响云资源和提供服务的机密性,可用性和完整性的网络侵入。 为解决此问题,我们在云中设计和集成贝叶斯分类器和Snort基于的网络入侵检测系统(NID)。 该框架旨在检测云环境中的网络入侵,具有低误报和经济实惠的计算成本。 为确保云中的NIDS模块的可行性,我们评估KDD'99实验数据集的性能和质量结果。

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