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An online Bayesian approach to change-point detection for categorical data

机译:一种在线贝叶斯方法来改变分类数据的点检测

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Change-point detection for categorical data has wide applications in many fields. Existing methods either are distribution-free, not utilizing categorical information sufficiently, or have limited performance when there exists "rare events" (events that occur with low frequency). In this paper, we propose a Bayesian change-point detection model for categorical data based on Dirichlet-multinomial mixtures. Because of the introduction of prior information, our method performs well for the existence of "rare events". An online parameter estimation procedure and an online detection strategy are then designed to adapt to data streams. Monte Carlo simulations discuss the power of the proposed method and show advantages compared with existing algorithms. Applications in biomedical research, document analysis, health news case study and location monitoring indicate practical values of our method. (C) 2020 Elsevier B.V. All rights reserved.
机译:分类数据的变更点检测在许多字段中具有广泛的应用程序。现有方法无论是无分布的,不充分利用分类信息,或者在存在“稀有事件”时具有有限的性能(低频发生的事件)。在本文中,我们提出了一种基于Dirichlet-Multimial Mixtoures的分类数据的贝叶斯变化点检测模型。由于引入了先前信息,我们的方法对于存在“罕见事件”而言。然后,设计在线参数估计过程和在线检测策略以适应数据流。与现有算法相比,蒙特卡罗模拟讨论了所提出的方法的力量,并表现出优势。在生物医学研究中的应用,文件分析,健康新闻案例研究和位置监测表明了我们方法的实用价值。 (c)2020 Elsevier B.v.保留所有权利。

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