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Process Discovery Using Classification Tree Hidden Semi-Markov Model

机译:使用分类树的进程发现隐藏半markov模型

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Various and ubiquitous information systems are being used in monitoring, exchanging, and collecting information. These systems are generating massive amount of event sequence logs that may help us understand underlying phenomenon. By analyzing these logs, we can learn process models that describe system procedures, predict the development of the system, or check whether the changes are expected. In this paper, we consider a novel technique that models these sequences of events in temporal-probabilistic manners. Specifically, we propose a probabilistic process model that combines hidden semi-Markov model and classification trees learning. Our experimental result shows that the proposed approach can answer a kind of question-"what are the most frequent sequence of system dynamics relevant to a given sequence of observable events?". For example, "Given a series of medical treatments, what are the most relevant patients' health condition pattern changes at different times?".
机译:各种和无处不在的信息系统正在用于监视,交换和收集信息。这些系统正在产生大量的事件序列日志,这可以帮助我们理解潜在现象。通过分析这些日志,我们可以学习描述系统过程的流程模型,预测系统的开发,或检查是否预期更改。在本文中,我们考虑一种以时间概率方式模拟这些事件序列的新技术。具体而言,我们提出了一种概率的过程模型,它结合了隐藏的半马尔可夫模型和分类树学习。我们的实验结果表明,所提出的方法可以回答一种问题 - “与给定的可观察事件的给定序列相关的系统动态最常见的序列是什么?”。例如,“鉴于一系列医疗治疗,最相关的患者健康状况模式在不同时间变化是什么?”。

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