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An Influence-Based Approach for Root Cause Alarm Discovery in Telecom Networks

机译:基于影响的电信网络引起警报发现的方法

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Alarm root cause analysis is a significant component in the day-to-day telecommunication network maintenance, and it is critical for efficient and accurate fault localization and failure recovery. In practice, accurate and self-adjustable alarm root cause analysis is a great challenge due to network complexity and vast amounts of alarms. A popular approach for failure root cause identification is to construct a graph with approximate edges, commonly based on either event co-occurrences or conditional independence tests. However, considerable expert knowledge is typically required for edge pruning. We propose a novel data-driven framework for root cause alarm localization, combining both causal inference and network embedding techniques. In this framework, we design a hybrid causal graph learning method (HPCI), which combines Hawkes Process with Conditional Independence tests, as well as propose a novel Causal Propagation-Based Embedding algorithm (CPBE) to infer edge weights. We subsequently discover root cause alarms in a real-time data stream by applying an influence maximization algorithm on the weighted graph. We evaluate our method on artificial data and real-world telecom data, showing a significant improvement over the best baselines.
机译:警报根本原因分析是日常电信网络维护中的重要组成部分,这对于高效准确的故障定位和故障恢复至关重要。在实践中,由于网络复杂性和大量警报,准确和自我调节的警报根本原因分析是一个很大的挑战。失败根本原因识别的流行方法是构造具有近似边的图形,通常基于任何事件共同发生或条件独立测试。然而,通常需要相当大的专家知识来进行边缘修剪。我们提出了一种新颖的数据驱动框架,用于根本原因警报定位,组合了因果推断和网络嵌入技术。在本框架中,我们设计了一种混合因果图学习方法(HPCI),它将Hawkes流程与条件独立测试相结合,并提出了一种新的基于因果传播的嵌入算法(CPBE)来推断边缘权重。随后通过在加权图上应用影响最大化算法,在实时数据流中发现根本原因警报。我们评估我们对人工数据和现实世界电信数据的方法,显示出对最佳基线的显着改善。

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