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首页> 外文期刊>International Journal of Engineering & Technology >Comparative analysis of various ensemble classifiers using ensemble feature selection for detecting and preventing trespassers in hybrid cloud(PDECC)
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Comparative analysis of various ensemble classifiers using ensemble feature selection for detecting and preventing trespassers in hybrid cloud(PDECC)

机译:使用集成特征选择检测和预防混合云中入侵者的各种集成分类器的比较分析

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We are in the era of anywhere any time computing and accessible to resources. Utility computing is the current and future of computing. However, at the same time cloud is vulnerable to attacks. We developed a Collaborative Intrusion Prevention and detection system in private multi cloud, in this one or more CSP’s are collaborated to deliver services to their registered users or clients. Our detection mechanism is done in a collaborated way if an anomaly is detected by one csp csp will inform other csp’s regarding this attack. Most of the earlier work is fo-cused on static data set i.e kdd cup 98, Darpa, cloud intrusion data set or on any other static data set. The earlier approaches of classification is processed on entire data set, or on feature-processed data or on correlation analysis of the attributes of the data set. In this paper we fo-cused on capturing live data using wire shark and for classification is done on based on closeness of the attributes called community which yields a better classification compared to correlation and other approaches. We recorded live traffic using Wire shark and pre-processing has been done using ensemble filtering techniques and detection has been done using Ensemble Classifiers Bagging, Boosting and Stacking and the results are compared. PDECC Bagging Random Forest Classifier achieved a high accuracy compared with PDECC Boosting, PDECC stacking and other methods.
机译:我们处于随时随地计算并可以访问资源的时代。效用计算是计算的当前和未来。但是,与此同时,云容易受到攻击。我们在私有多云环境中开发了一个协作式入侵防御和检测系统,在此一个或多个CSP的协作下,他们可以向其注册用户或客户提供服务。如果一个csp检测到异常,我们的检测机制将以协作的方式完成csp将通知其他csp有关此攻击。大部分较早的工作都集中在静态数据集,即kdd cup 98,Darpa,云入侵数据集或任何其他静态数据集上。较早的分类方法是在整个数据集,特征处理的数据或数据集属性的相关性分析上处理的。在本文中,我们着重于使用鲨鱼捕获实时数据,并基于称为社区的属性的紧密性进行分类,与相关性和其他方法相比,分类的分类效果更好。我们使用Wire shark记录了实时流量,并使用了集成过滤技术进行了预处理,并使用了Ensemble分类器Bagging,Boosting和Stacking完成了检测,并对结果进行了比较。与PDECC Boosting,PDECC Stacking和其他方法相比,PDECC Bagging随机森林分类器具有较高的准确性。

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