首页> 美国卫生研究院文献>International Journal of Environmental Research and Public Health >Leveraging Data Quality to Better Prepare for Process Mining: An Approach Illustrated Through Analysing Road Trauma Pre-Hospital Retrieval and Transport Processes in Queensland
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Leveraging Data Quality to Better Prepare for Process Mining: An Approach Illustrated Through Analysing Road Trauma Pre-Hospital Retrieval and Transport Processes in Queensland

机译:利用数据质量更好地为流程挖掘做准备:通过分析昆士兰州道路创伤的院前检索和运输过程来举例说明的方法

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摘要

While noting the importance of data quality, existing process mining methodologies (i) do not provide details on how to assess the quality of event data (ii) do not consider how the identification of data quality issues can be exploited in the planning, data extraction and log building phases of any process mining analysis, (iii) do not highlight potential impacts of poor quality data on different types of process analyses. As our key contribution, we develop a process-centric, data quality-driven approach to preparing for a process mining analysis which can be applied to any existing process mining methodology. Our approach, adapted from elements of the well known CRISP-DM data mining methodology, includes conceptual data modeling, quality assessment at both attribute and event level, and trial discovery and conformance to develop understanding of system processes and data properties to inform data extraction. We illustrate our approach in a case study involving the Queensland Ambulance Service (QAS) and Retrieval Services Queensland (RSQ). We describe the detailed preparation for a process mining analysis of retrieval and transport processes (ground and aero-medical) for road-trauma patients in Queensland. Sample datasets obtained from QAS and RSQ are utilised to show how quality metrics, data models and exploratory process mining analyses can be used to (i) identify data quality issues, (ii) anticipate and explain certain observable features in process mining analyses, (iii) distinguish between systemic and occasional quality issues, and (iv) reason about the mechanisms by which identified quality issues may have arisen in the event log. We contend that this knowledge can be used to guide the data extraction and pre-processing stages of a process mining case study to properly align the data with the case study research questions.
机译:在注意到数据质量的重要性的同时,现有的流程挖掘方法(i)未提供有关如何评估事件数据质量的详细信息(ii)未考虑如何在计划,数据提取中利用识别数据质量的问题以及任何过程挖掘分析的日志构建阶段,(iii)都没有强调劣质数据对不同类型过程分析的潜在影响。作为我们的主要贡献,我们开发了以流程为中心,以数据质量为驱动力的方法,以准备进行流程挖掘分析,该分析可应用于任何现有的流程挖掘方法。我们的方法采用了众所周知的CRISP-DM数据挖掘方法的要素,包括概念性数据建模,属性和事件级别的质量评估以及试验发现和一致性,以加深对系统过程和数据属性的了解,从而为数据提取提供信息。我们在涉及昆士兰救护车服务(QAS)和昆士兰州检索服务(RSQ)的案例研究中说明了我们的方法。我们描述了昆士兰道路创伤患者的检索和运输过程(地面和航空医学)过程挖掘分析的详细准备工作。从QAS和RSQ获得的样本数据集用于显示如何使用质量指标,数据模型和探索性过程挖掘分析来(i)识别数据质量问题,(ii)预测并解释过程挖掘分析中的某些可观察特征,(iii )区分系统性质量问题和偶然性质量问题,以及(iv)关于事件日志中可能出现已识别质量问题的机制的原因。我们认为,该知识可用于指导流程挖掘案例研究的数据提取和预处理阶段,以使数据与案例研究问题正确匹配。

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