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Contextual Anomaly Detection Using Log-Linear Tensor Factorization

机译:使用对数线性张量分解的上下文异常检测

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This paper presents a novel approach for the detection of contextual anomalies. This approach, based on log-linear tensor factorization, considers a stream of discrete events, each representing the co-occurence of contextual elements, and detects events with low-probability. A parametric model is used to learn the joint probability of contextual elements, in which the parameters are the factors of the event tensor. An efficient method, based on Nesterov's accelerated gradient ascent, is proposed to learn these parameters. The proposed approach is evaluated on the low-rank approximation of tensors, the prediction of future of events and the detection of events representing abnormal behaviors. Results show our method to outperform state of the art approaches for these problems.
机译:本文提出了一种检测上下文异常的新颖方法。这种基于对数线性张量分解的方法考虑了离散事件流,每个离散事件代表上下文元素的共现,并以低概率检测事件。参数模型用于学习上下文元素的联合概率,其中参数是事件张量的因素。提出了一种基于Nesterov的加速梯度上升的有效方法来学习这些参数。对张量的低秩逼近,事件的未来预测以及代表异常行为的事件的检测进行了评估。结果表明,我们的方法优于这些问题的最新方法。

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