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Distributed Online One-Class Support Vector Machine for Anomaly Detection Over Networks

机译:分布式在线一类支持向量机,用于网络异常检测

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摘要

Anomaly detection has attracted much attention in recent years since it plays a crucial role in many domains. Various anomaly detection approaches have been proposed, among which one-class support vector machine (OCSVM) is a popular one. In practice, data used for anomaly detection can be distributively collected via wireless sensor networks. Besides, as the data usually arrive at the nodes sequentially, online detection method that can process streaming data is preferred. In this paper, we formulate a distributed online OCSVM for anomaly detection over networks and get a decentralized cost function. To get the decentralized implementation without transmitting the original data, we use a random approximate function to replace the kernel function. Furthermore, to find an appropriate approximate dimension, we add a sparse constraint into the decentralized cost function to get another one. Then we minimize these two cost functions by stochastic gradient descent and derive two distributed algorithms. Some theoretical analysis and experiments are performed to show the effectiveness of the proposed algorithms. Experimental results on both synthetic and real datasets reveal that both of the proposed algorithms achieve low mis-detection rates and high true positive rates. Compared with other state-of-the-art anomaly detection methods, the proposed distributed algorithms not only show good anomaly detection performance, but also require relatively short running time and low CPU memory consumption.
机译:由于异常检测在许多领域中都起着至关重要的作用,因此近年来引起了极大的关注。已经提出了各种异常检测方法,其中一种流行的是一类支持向量机(OCSVM)。实际上,可以通过无线传感器网络分布式收集用于异常检测的数据。此外,由于数据通常顺序地到达节点,因此优选能够处理流数据的在线检测方法。在本文中,我们制定了一个分布式的在线OCSVM用于通过网络进行异常检测,并获得了分散的成本函数。为了在不传输原始数据的情况下获得分散的实现,我们使用随机近似函数代替内核函数。此外,为了找到合适的近似维,我们在分散成本函数中添加了一个稀疏约束以获得另一个维。然后,我们通过随机梯度下降最小化这两个成本函数,并得出两个分布式算法。通过理论分析和实验证明了所提算法的有效性。在合成数据集和真实数据集上的实验结果均表明,两种算法均实现了低误检率和高真实率。与其他最新的异常检测方法相比,所提出的分布式算法不仅显示出良好的异常检测性能,而且需要相对较短的运行时间和较低的CPU内存消耗。

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