Academic literature on reference model mining from process model collections is relatively sparse, and existing approaches typically focus on control flow properties, i.e., activity orderings. In practice, however, other model properties, such as diagram name, non-graphical diagram-level and element-level attributes, as well as non-control flow elements such as roles/
To this end, we will identify process model properties and algorithms for identifying reference model candidates in a large collection of business processes. Specifically, this thesis includes the following tasks:
(i) Identify relevant process model properties for clustering models into reference model- oriented groups.
(ii) Evaluate different clustering algorithms on a real-world dataset.
Find more information here.
If you are interested, please get in touch with Prof. Rehse.