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Cloud Insider Attack Detection Using Machine Learning

机译:使用机器学习的Cloud Insider攻击检测

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Security has always been a major issue in cloud. Data sources are the most valuable and vulnerable information which is aimed by attackers to steal. If data is lost, then the privacy and security of every cloud user are compromised. Even though a cloud network is secured externally, the threat of an internal attacker exists. Internal attackers compromise a vulnerable user node and get access to a system. They are connected to the cloud network internally and launch attacks pretending to be trusted users. Machine learning approaches are widely used for cloud security issues. The existing machine learning based security approaches classify a node as a misbehaving node based on short-term behavioral data. These systems do not differentiate whether a misbehaving node is a malicious node or a broken node. To address this problem, this paper proposes an Improvised Long Short-Term Memory (ILSTM) model which learns the behavior of a user and automatically trains itself and stores the behavioral data. The model can easily classify the user behavior as normal or abnormal. The proposed ILSTM not only identifies an anomaly node but also finds whether a misbehaving node is a broken node or a new user node or a compromised node using the calculated trust factor. The proposed model not only detects the attack accurately but also reduces the false alarm in the cloud network.
机译:安全一直是云中的主要问题。数据源是攻击者旨在窃取的最有价值和最脆弱的信息。如果数据丢失,那么每个云用户的隐私和安全都会受到损害。即使外部保护了云网络,也存在内部攻击者的威胁。内部攻击者会破坏易受攻击的用户节点并获得对系统的访问权限。它们在内部连接到云网络,并发动冒充受信任用户的攻击。机器学习方法被广泛用于云安全问题。现有的基于机器学习的安全性方法基于短期行为数据将节点分类为行为异常的节点。这些系统无法区分行为异常的节点是恶意节点还是损坏的节点。为了解决这个问题,本文提出了一种改进的长期短期记忆(ILSTM)模型,该模型可以学习用户的行为并自动进行自我训练并存储行为数据。该模型可以轻松地将用户行为分类为正常还是异常。提出的ILSTM不仅可以识别异常节点,还可以使用计算出的信任因子来确定行为异常的节点是损坏的节点还是新的用户节点或受损的节点。所提出的模型不仅可以准确地检测到攻击,而且可以减少云网络中的虚假警报。

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