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 compet...
Timestamp information recorded in event logs plays a crucial role in uncovering meaningful insights ...
While noting the importance of data quality, existing process mining methodologies (i) do not provid...
Process mining allows analysts to exploit logs of historical executions of business processes to ext...
Process mining, as with any form of data analysis, relies heavily on the quality of input data to ge...
Since its emergence over two decades ago, process mining has flourished as a discipline, with numero...
Real-life event logs, reflecting the actual executions of complex business processes, are faced with...
Process-oriented data mining (process mining) uses algorithms and data (in the form of event logs) t...
Process-oriented data mining (process mining) uses algorithms and data (in the form of event logs) t...
Process mining is the research domain that is dedicated to the a posteriori analysis of business pro...
Timestamp information recorded in event logs plays a crucial role in uncovering meaningful insights ...
Process mining is a relatively new data analysis discipline. As with other forms of data analysis, t...
The growing interest in process mining is fueled by the increasing availability of event data. Proce...
Abstract. The growing interest in process mining is fueled by the in-creasing availability of event ...
Timestamp information recorded in event logs plays a crucial role in uncovering meaningful insights ...
While noting the importance of data quality, existing process mining methodologies (i) do not provid...
Process mining allows analysts to exploit logs of historical executions of business processes to ext...
Process mining, as with any form of data analysis, relies heavily on the quality of input data to ge...
Since its emergence over two decades ago, process mining has flourished as a discipline, with numero...
Real-life event logs, reflecting the actual executions of complex business processes, are faced with...
Process-oriented data mining (process mining) uses algorithms and data (in the form of event logs) t...
Process-oriented data mining (process mining) uses algorithms and data (in the form of event logs) t...
Process mining is the research domain that is dedicated to the a posteriori analysis of business pro...
Timestamp information recorded in event logs plays a crucial role in uncovering meaningful insights ...
Process mining is a relatively new data analysis discipline. As with other forms of data analysis, t...
The growing interest in process mining is fueled by the increasing availability of event data. Proce...
Abstract. The growing interest in process mining is fueled by the in-creasing availability of event ...
Timestamp information recorded in event logs plays a crucial role in uncovering meaningful insights ...
While noting the importance of data quality, existing process mining methodologies (i) do not provid...
Process mining allows analysts to exploit logs of historical executions of business processes to ext...