Mining temporal lag from fluctuating events for correlation and root cause analysis

Chunqiu Zeng, L. Tang, Tao Li, L. Shwartz, G. Grabarnik
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引用次数: 29

Abstract

The importance of mining time lags of hidden temporal dependencies from sequential data is highlighted in many domains including system management, stock market analysis, climate monitoring, and more. Mining time lags of temporal dependencies provides useful insights into understanding the sequential data and predicting its evolving trend. Traditional methods mainly utilize the predefined time window to analyze the sequential items or employ statistic techniques to identify the temporal dependencies from the sequential data. However, it is a challenging task for existing methods to find time lag of temporal dependencies in the real world, where time lags are fluctuating, noisy, and tend to be interleaved with each other. This paper introduces a parametric model to describe noisy time lags. Then an efficient expectation maximization approach is proposed to find the time lag with maximum likelihood. This paper also contributes an approximation method for learning time lag to improve the scalability without incurring significant loss of accuracy. Extensive experiments on both synthetic and real data sets are conducted to demonstrate the effectiveness and efficiency of proposed methods.
从波动事件中挖掘时间滞后以进行相关性和根本原因分析
从序列数据中挖掘隐藏时间依赖性的时间滞后的重要性在许多领域都得到了强调,包括系统管理、股票市场分析、气候监测等。挖掘时间依赖性的时间滞后为理解序列数据和预测其演变趋势提供了有用的见解。传统的方法主要是利用预定义的时间窗口来分析序列项,或者利用统计技术来识别序列数据的时间依赖性。然而,在现实世界中,由于时间滞后是波动的、有噪声的,并且往往是相互交错的,现有的方法很难找到时间依赖的滞后。本文引入了一个参数化模型来描述噪声时滞。然后提出了一种有效的期望最大化方法来寻找最大似然的时滞。本文还提出了一种学习滞后的近似方法,以提高可扩展性,而不会导致显著的准确性损失。在合成数据集和真实数据集上进行了大量实验,以证明所提出方法的有效性和效率。
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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