基于机器学习的安全云计算环境异常检测方法

Priya Parameswarappa, Taral Shah, Govinda rajulu Lanke
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引用次数: 0

摘要

“云计算”的概念被认为是提供在线服务托管和分发的一种很有前途的策略。尽管云计算被广泛采用,但安全性仍然是重中之重。已经设计了几种安全方法来保护这种情况下的通信,其中大多数解决方案基于攻击签名。不幸的是,这些技术并不能总是检测到所有可能的危险。最近提出了一种机器学习方法。如果训练集缺少某个类别的样本,则判断可能是不准确的。在本研究中,提出了一种基于机器学习系统的安全云计算防火墙策略。提出的方法通过将过去节点的判断与当前机器学习算法的决策相结合来估计最终的攻击类别分类,这种技术称为最频繁决策。该方法提高了学习效率和系统精度。我们的结果是基于UNSW-NB-15,一个公开的数据集。根据我们的数据提供的证据,它将异常检测提高了97.68%。基于机器学习的安全云计算环境异常检测方法
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A Machine Learning-Based Approach for Anomaly Detection for Secure Cloud Computing Environments
The concept of "cloud computing" has been presented as a promising strategy for providing online service hosting and distribution. Despite the widespread adoption of cloud computing, security remains a top priority. Several secure methods have been devised to safeguard communication in such scenarios, with the majority of these solutions based on attack signatures. Unfortunately, these technologies cannot always detect every possible danger. A machine learning method was recently outlined. The judgment could be inaccurate if the training set is missing examples from a certain category. In this research, an innovative firewall strategy for safe cloud-based computing is presented using machine learning system. The proposed methods estimate the final assault category categorization by combining the judgments of the nodes from the past with the decision of the machine learning algorithm in the present, a technique termed most frequent decision. Both learning efficiency and system precision are improved by this method. Our results are based on UNSW-NB-15, a publicly available dataset. According to the evidence provided by our data, it improves anomaly detection by 97.68 percent. A Machine Learning-Based Approach for Anomaly Detection for Secure Cloud Computing Environments
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