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Estimation of Types of States in Partial Observable Network Systems

机译:局部可观测网络系统中状态类型的估计

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Estimating of types of states in network systems is essential for protecting network infrastructures from cyberattacks, managing network traffic, and detecting changes in network systems. It is very difficult to estimate the types of states in network systems due to their high complexity. The accuracy of the estimating the states in network systems depends heavily on the completeness of the collected sensor information. But the state of a network system at a given point in time may be never fully known due to noisy sensors; making more difficult to estimate the entire true state of a network system because certain features of the input data may be missing. In order to estimate the states in a network system in partially observable environments, an approach to estimating the types of states in partially observable cyber systems is presented. This approach involves the use of a convolutional neural network (CNN), and unsupervised learning with elbow method and k-means clustering algorithm.
机译:估计网络系统中状态的类型对于保护网络基础架构免受网络攻击,管理网络流量以及检测网络系统中的更改至关重要。由于网络系统的状态非常复杂,因此很难估计它们的状态。在网络系统中估计状态的准确性在很大程度上取决于所收集传感器信息的完整性。但是由于传感器嘈杂,可能永远无法完全了解给定时间点的网络系统状态。由于可能会缺少输入数据的某些功能,因此很难估计网络系统的整个真实状态。为了估计部分可观察的环境中的网络系统中的状态,提出了一种估计部分可观察的网络系统中的状态类型的方法。这种方法涉及卷积神经网络(CNN)的使用,以及肘形方法和k-means聚类算法的无监督学习。

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