Quality-informed semi-automated event log generation for process mining

作者:

Highlights:

• Quality-informed event log generation from relational source data

• Provides a measurement approach for fitness-for-use of relational source data for process mining

• Develops the concept of event constructors as a mapping between source data and event log attributes

• Uses Design Science Research methodology & evaluation frameworks to validate RDB2Log

• Implemented software prototype evaluated as useful and applicable in real-world settings by both practitioner and research groups

摘要

Process mining, as with any form of data analysis, relies heavily on the quality of input data to generate accurate and reliable results. A fit-for-purpose event log nearly always requires time-consuming, manual pre-processing to extract events from source data, with data quality dependent on the analyst's domain knowledge and skills. Despite much being written about data quality in general, a generalisable framework for analysing event data quality issues when extracting logs for process mining remains unrealised. Following the DSR paradigm, we present RDB2Log, a quality-aware, semi-automated approach for extracting event logs from relational data. We validated RDB2Log's design against design objectives extracted from literature and competing artifacts, evaluated its design and performance with process mining experts, implemented a prototype with a defined set of quality metrics, and applied it in laboratory settings and in a real-world case study. The evaluation shows that RDB2Log is understandable, of relevance in current research, and supports process mining in practice.

论文关键词:Process mining,Data quality,Event log,Log extraction

论文评审过程:Received 7 June 2019, Revised 3 February 2020, Accepted 5 February 2020, Available online 15 February 2020, Version of Record 29 March 2020.

论文官网地址:https://doi.org/10.1016/j.dss.2020.113265