Generating Hidden Markov Models from Process Models Through Nonnegative Tensor Factorization

IF 0.7 4区 计算机科学 Q4 COMPUTER SCIENCE, INTERDISCIPLINARY APPLICATIONS
Erik Skau, Andrew Hollis, Stephan Eidenbenz, Kim Rasmussen, Boian Alexandrov
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引用次数: 0

Abstract

Monitoring of industrial processes is a critical capability in industry and in government to ensure reliability of production cycles, quick emergency response, and national security. Process monitoring allows users to gauge the progress of an organization in an industrial process or predict the degradation or aging of machine parts in processes taking place at a remote location. Similar to many data science applications, we usually only have access to limited raw data, such as satellite imagery, short video clips, event logs, and signatures captured by a small set of sensors. To combat data scarcity, we leverage the knowledge of Subject Matter Experts (SMEs) who are familiar with the actions of interest. SMEs provide expert knowledge of the essential activities required for task completion and the resources necessary to carry out each of these activities. Various process mining techniques have been developed for this type of analysis; typically such approaches combine theoretical process models built based on domain expert insights with ad-hoc integration of available pieces of raw data. Here, we introduce a novel mathematically sound method that integrates theoretical process models (as proposed by SMEs) with interrelated minimal Hidden Markov Models (HMM), built via nonnegative tensor factorization. Our method consolidates: (a) theoretical process models, (b) HMMs, (c) coupled nonnegative matrix-tensor factorizations, and (d) custom model selection. To demonstrate our methodology and its abilities, we apply it on simple synthetic and real world process models.

通过非负张量因式分解从过程模型生成隐马尔可夫模型
工业流程监控是工业和政府的一项重要能力,可确保生产周期的可靠性、快速应急响应和国家安全。流程监控使用户能够衡量组织在工业流程中的进展情况,或预测远程流程中机器零件的退化或老化情况。与许多数据科学应用类似,我们通常只能获得有限的原始数据,如卫星图像、视频短片、事件日志和由一小部分传感器捕获的特征。为了解决数据匮乏的问题,我们利用熟悉相关行动的主题专家(SME)的知识。中小型企业可以提供完成任务所需的基本活动以及开展每项活动所需的资源方面的专家知识。为进行此类分析,人们开发了各种流程挖掘技术;这些方法通常将基于领域专家见解建立的理论流程模型与现有原始数据的临时整合相结合。在此,我们介绍一种数学上合理的新方法,它将中小型企业提出的理论流程模型与通过非负张量因子化建立的相互关联的最小隐马尔可夫模型(HMM)相结合。我们的方法整合了:(a) 理论流程模型,(b) HMM,(c) 耦合非负矩阵-张量因式分解,以及 (d) 自定义模型选择。为了展示我们的方法及其能力,我们将其应用于简单的合成模型和真实世界的过程模型。
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来源期刊
ACM Transactions on Modeling and Computer Simulation
ACM Transactions on Modeling and Computer Simulation 工程技术-计算机:跨学科应用
CiteScore
2.50
自引率
22.20%
发文量
29
审稿时长
>12 weeks
期刊介绍: The ACM Transactions on Modeling and Computer Simulation (TOMACS) provides a single archival source for the publication of high-quality research and developmental results referring to all phases of the modeling and simulation life cycle. The subjects of emphasis are discrete event simulation, combined discrete and continuous simulation, as well as Monte Carlo methods. The use of simulation techniques is pervasive, extending to virtually all the sciences. TOMACS serves to enhance the understanding, improve the practice, and increase the utilization of computer simulation. Submissions should contribute to the realization of these objectives, and papers treating applications should stress their contributions vis-á-vis these objectives.
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