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Deep learning architecture for collaborative anomaly detection and explanation

机译:用于协作异常检测和解释的深度学习架构

摘要

In one embodiment, a network assurance service that monitors a network detects a behavioral anomaly in the network using an anomaly detector that compares an anomaly detection threshold to a target value calculated based on a first set of one or more measurements from the network. The service uses an explanation model to predict when the anomaly detector will detect anomalies. The explanation model takes as input a second set of one or more measurements from the network that differs from the first set. The service determines that the detected anomaly is explainable, based on the explanation model correctly predicting the detection of the anomaly by the anomaly detector. The service provides an anomaly detection alert for the detected anomaly to a user interface, based on the detected anomaly being explainable. The anomaly detection alert indicates at least one measurement from the second set as an explanation for the anomaly.
机译:在一个实施例中,监视网络的网络保证服务使用异常检测器来检测网络中的行为异常,该异常检测器将异常检测阈值与基于来自网络的一个或多个测量的第一集合计算出的目标值进行比较。该服务使用解释模型来预测异常检测器何时将检测到异常。解释模型将来自网络的不同于第一组的一个或多个测量的第二组作为输入。服务基于正确预测异常检测器对异常的检测的解释模型,确定检测到的异常是可以解释的。该服务基于检测到的异常是可解释的,向用户界面提供针对检测到的异常的异常检测警报。异常检测警报指示第二组中至少有一个测量值作为对异常的解释。

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