首页> 外文会议>International Conference on Cloud Computing, Data Science Engineering >Clustering Based Incident Handling For Anomaly Detection in Cloud Infrastructures
【24h】

Clustering Based Incident Handling For Anomaly Detection in Cloud Infrastructures

机译:用于云基础架构中异常检测的基于集群的事件处理

获取原文

摘要

Incident Handling for Cloud Infrastructures focuses on how the clustering based and non-clustering based algorithms can be implemented. Our research focuses in identifying anomalies and suspicious activities that might happen inside a Cloud Infrastructure over available datasets. A brief study has been conducted, where a network statistics dataset the NSL-KDD, has been chosen as the model to be worked upon, such that it can mirror the Cloud Infrastructure and its components. An important aspect of cloud security is to implement anomaly detection mechanisms, in order to monitor the incidents that inhibit the development and the efficiency of the cloud. Several methods have been discovered which help in achieving our present goal, some of these are highlighted as the following; by applying algorithm such as the Local Outlier Factor to cancel the noise created by irrelevant data points, by applying the DBSCAN algorithm which can detect less denser areas in order to identify their cause of clustering, the K-Means algorithm to generate positive and negative clusters to identify the anomalous clusters and by applying the Isolation Forest algorithm in order to implement decision based approach to detect anomalies. The best algorithm would help in finding and fixing the anomalies efficiently and would help us in developing an Incident Handling model for the Cloud.
机译:云基础架构的事件处理重点在于如何实现基于群集和基于非群集的算法。我们的研究重点是确定可用数据集在云基础架构内部可能发生的异常和可疑活动。进行了简短的研究,其中选择了网络统计数据集NSL-KDD作为要使用的模型,以便它可以反映Cloud Infrastructure及其组件。云安全性的一个重要方面是实施异常检测机制,以监视抑制云发展和效率的事件。已经发现了几种有助于实现我们当前目标的方法,下面重点介绍其中一些;通过应用诸如局部离群因子之类的算法来消除不相关数据点产生的噪声,通过应用可以检测密度较小的区域以识别其聚类原因的DBSCAN算法,使用K-Means算法生成正负聚类识别异常簇,并通过应用“隔离林”算法来实施基于决策的方法来检测异常。最好的算法将有助于有效地发现和修复异常,并有助于我们为云开发事件处理模型。

著录项

相似文献

  • 外文文献
  • 中文文献
  • 专利
获取原文

客服邮箱:kefu@zhangqiaokeyan.com

京公网安备:11010802029741号 ICP备案号:京ICP备15016152号-6 六维联合信息科技 (北京) 有限公司©版权所有
  • 客服微信

  • 服务号