Anomaly Noise Filtering with Logistic Regression and a New Method for Time Series Trend Computation for Monitoring Systems

Qing Gao, Li-Min Zhu, Yuxin Lin, Xun Chen
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引用次数: 2

Abstract

Anomaly detection has always been a hot topic in signal processing and machine learning. Convolutional Neural Network (CNN) is an effective technique to detect anomaly. However, at Ant Financial, a simple CNN neglects certain patterns in real-world data that may lead to triggering of false alarms. To reduce the possibility of a false alarm, we run an anomaly noise filtering model after the CNN. In this paper, we introduce techniques to develop the model and a new method of time series trend computation. The model helps increase the accuracy in detecting false anomalies of a rise-fall pattern in the traffic(y-value) of a time series dataset. At the end of the paper, we will present the benchmarks of using our method on real online systems at Ant Financial.
基于逻辑回归的异常噪声滤波及监测系统时间序列趋势计算新方法
异常检测一直是信号处理和机器学习领域的研究热点。卷积神经网络(CNN)是一种有效的异常检测技术。然而,在蚂蚁金服,一个简单的CNN忽略了现实世界数据中的某些模式,这些模式可能导致触发假警报。为了减少误报的可能性,我们在CNN之后运行了一个异常噪声滤波模型。本文介绍了该模型的开发技术和一种新的时间序列趋势计算方法。该模型有助于提高检测时间序列数据集中流量(y值)上升下降模式的假异常的准确性。在论文的最后,我们将展示在蚂蚁金服的真实在线系统上使用我们的方法的基准。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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