Sciweavers

APBPM
2013

Process Cubes: Slicing, Dicing, Rolling Up and Drilling Down Event Data for Process Mining

9 years 12 months ago
Process Cubes: Slicing, Dicing, Rolling Up and Drilling Down Event Data for Process Mining
Recent breakthroughs in process mining research make it possible to discover, analyze, and improve business processes based on event data. The growth of event data provides many opportunities but also imposes new challenges. Process mining is typically done for an isolated well-defined process in steady-state. However, the boundaries of a process may be fluid and there is a need to continuously view event data from different angles. This paper proposes the notion of process cubes where events and process models are organized using different dimensions. Each cell in the process cube corresponds to a set of events and can be used to discover a process model, to check conformance with respect to some process model, or to discover bottlenecks. The idea is related to the well-known OLAP (Online Analytical Processing) data cubes and associated operations such as slice, dice, roll-up, and drill-down. However, there are also significant differences because of the process-related nature o...
Wil M. P. van der Aalst
Added 27 Apr 2014
Updated 27 Apr 2014
Type Journal
Year 2013
Where APBPM
Authors Wil M. P. van der Aalst
Comments (0)