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HyClass: Hybrid Classification Model for Anomaly Detection in Cloud Environment

机译:HyClass:用于云环境中异常检测的混合分类模型

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Network traffic analysis is one of the most important tasks in the era of on-demand Cloud Computing. However, increased resilience on computing needs, migration flexibility, and decreased costs, have made the security and privacy issues more challenging in the context of cloud computing. Although, there are several anomaly detection techniques available in literature, but due to the unbalanced nature of data, curse of dimensionality, noise in incoming data, and frequently changing anomalies, most of the existing solutions pose critical challenges in detection of aberrant patterns. Thus, in order to overcome these gaps, a new ensemble based anomaly detection scheme called "Hybrid Classification Model for Anomaly Detection (HyClass)" in cloud environment has been proposed. HyClass operates in two phases: feature selection and classification namely- (i) Boruta algorithm supported by scaling and normalization to identify important set of features and improve the accuracy and efficiency of subsequent classification and (ii) Chaotic Optimization and Differential evolution based Support Vector Machine to reduce the computational complexity by tuning the parameters of kernel function and perform classification with high accuracy. In order to evaluate the proposed anomaly detection model, two case-studies were conducted using real-time dataset from our University network and benchmark Knowledge Discovery and Data Mining (KDD'99) dataset. Experimental results in terms of detection rate, false positive rate and accuracy demonstrate the effectiveness and reliability of the proposed HyClass model.
机译:网络流量分析是按需云计算时代最重要的任务之一。但是,对计算需求的适应能力增强,迁移灵活性和成本降低,使得安全性和隐私问题在云计算环境中更具挑战性。尽管文献中提供了几种异常检测技术,但是由于数据的不平衡特性,维数的诅咒,传入数据中的噪声以及频繁变化的异常,大多数现有解决方案在检测异常模式时都面临着严峻的挑战。因此,为了克服这些差距,提出了一种新的基于集成的云环境中的异常检测方案,称为“异常检测的混合分类模型(HyClass)”。 HyClass分两个阶段运行:特征选择和分类-(i)通过缩放和归一化支持的Boruta算法,以识别重要特征集并提高后续分类的准确性和效率;(ii)基于混沌优化和差分进化的支持向量机通过调整内核函数的参数来降低计算复杂度,并以高精度执行分类。为了评估建议的异常检测模型,使用来自我们大学网络的实时数据集和基准知识发现与数据挖掘(KDD'99)数据集进行了两个案例研究。在检测率,假阳性率和准确性方面的实验结果证明了所提出的HyClass模型的有效性和可靠性。

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