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BINet: Multivariate Business Process Anomaly Detection Using Deep Learning

机译:BINet:使用深度学习的多元业务流程异常检测

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In this paper, we propose BINet, a neural network architecture for real-time multivariate anomaly detection in business process event logs. BINet has been designed to handle both the control flow and the data perspective of a business process. Additionally, we propose a heuristic for setting the threshold of an anomaly detection algorithm automatically. We demonstrate that BINet can be used to detect anomalies in event logs not only on a case level, but also on event attribute level. We compare BINet to 6 other state-of-the-art anomaly detection algorithms and evaluate their performance on an elaborate data corpus of 60 synthetic and 21 real life event logs using artificial anomalies. BINet reached an average F_1 score over all detection levels of 0.83, whereas the next best approach, a denoising autoencoder, reached only 0.74. This F_1 score is calculated over two different levels of detection, namely case and attribute level. BINet reached 0.84 on case and 0.82 on attribute level, whereas the next best approach reached 0.78 and 0.71 respectively.
机译:在本文中,我们提出了BINet,这是一种用于在业务流程事件日志中进行实时多元异常检测的神经网络体系结构。 BINet旨在处理业务流程的控制流和数据透视图。另外,我们提出了一种启发式算法,用于自动设置异常检测算法的阈值。我们证明了BINet不仅可以用于案例级别,而且可以用于事件属性级别,以检测事件日志中的异常。我们将BINet与其他6种最新的异常检测算法进行了比较,并使用人工异常对60个合成事件日志和21个现实事件日志进行了精心设计的数据集,以评估其性能。 BINet在所有检测级别上均达到了平均F_1分数,为0.83,而第二好的方法是去噪自动编码器,仅达到0.74。在两个不同的检测级别(即案例级别和属性级别)上计算出此F_1分数。 BINet在案例上达到0.84,在属性级别上达到0.82,而次佳的方法分别达到0.78和0.71。

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