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Online common change-point detection in a set of nonstationary categorical time series

机译:一组非间断分类时间序列中的在线常见变化点检测

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摘要

Categorical sequences are widely used in various domains to describe the evolutionary state of the process under study. This article addresses the problem of behavioral change detection for multiple categorical time series. Relying on the sequential likelihood ratio test, an online change detection method is proposed based on the joint modeling of all the categorical sequences. To model the joint probability density, a nonhomogeneous Markov model is used. It allows modeling the transition dynamics over time and considering their dependence on some exogenous factors that may influence the behavior changes. An adaptive threshold is learned using Monte Carlo simulations to detect different changes and reduce false alarms. The performance of the proposed method is evaluated using two real-world and four synthetic datasets. It is compared with two state-of-the-art change detection methods, namely logistic regression and homogeneous Markov model. The experimentation using synthetic datasets highlights the proposed method & rsquo;s effectiveness in terms of both the detection precision and the detection delay. The real-world data are issued from a water network and school-to-work transition. The analysis of the model estimated parameters allows us to characterize the detected changes in a real-world context.(c) 2021 Elsevier B.V. All rights reserved.
机译:分类序列广泛用于各个结构域,以描述研究下的过程的进化状态。本文涉及多个分类时间序列的行为变化检测问题。依靠顺序似然比测试,基于所有分类序列的联合建模提出在线改变检测方法。为了建模联合概率密度,使用非均匀性马尔可夫模型。它允许随时间建模过渡动态,并考虑到它们对可能影响行为变化的一些外源因素的依赖性。使用Monte Carlo模拟学习自适应阈值以检测不同的变化并减少误报。使用两个现实世界和四个合成数据集进行评估所提出的方法的性能。它与两个最先进的变化检测方法相比,即逻辑回归和同一性马尔可夫模型。使用合成数据集的实验突出了所提出的方法和rsquo; S的检测精度和检测延迟方面的有效性。现实世界数据来自水网络和学校工作过渡。模型估计参数的分析允许我们在真实世界上下文中的检测到的变化。(c)2021 elestvier b.v.保留所有权利。

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