TY - GEN
T1 - Examining case management demand using event log complexity metrics
AU - Benner-Wickner, Marian
AU - Book, Matthias
AU - Bruckmann, Tobias
AU - Gruhn, Volker
N1 - Publisher Copyright: © 2014 IEEE.
PY - 2014/12/2
Y1 - 2014/12/2
N2 - One of the main goals of process mining is to automatically discover meaningful process models from event logs. Since these logs are the essential source of information for discovery algorithms, their quality is of high importance. In recent years, many studies on the quality of resulting process models have been conducted. However, the analysis of event log quality prior to the generation of models has been neglected. For example, yet there are no metrics which can measure the degree of event log quality that is needed so that discovery algorithms can be applied. Especially in the context of case management (CM) where processes are less structured, complex event logs reduce the effectiveness of the process discovery. In order to avoid mining impractical 'spaghetti processes', it would be convenient to measure the event log complexity prior to discovery steps. In this paper, we provide our research results concerning the design and applicability of such metrics. First of all, they shall help to indicate whether the event log quality is sufficient for traditional process discovery. In case of very poor quality, they indicate the demand for more agile techniques (e.g. adaptive CM or agenda-driven CM).
AB - One of the main goals of process mining is to automatically discover meaningful process models from event logs. Since these logs are the essential source of information for discovery algorithms, their quality is of high importance. In recent years, many studies on the quality of resulting process models have been conducted. However, the analysis of event log quality prior to the generation of models has been neglected. For example, yet there are no metrics which can measure the degree of event log quality that is needed so that discovery algorithms can be applied. Especially in the context of case management (CM) where processes are less structured, complex event logs reduce the effectiveness of the process discovery. In order to avoid mining impractical 'spaghetti processes', it would be convenient to measure the event log complexity prior to discovery steps. In this paper, we provide our research results concerning the design and applicability of such metrics. First of all, they shall help to indicate whether the event log quality is sufficient for traditional process discovery. In case of very poor quality, they indicate the demand for more agile techniques (e.g. adaptive CM or agenda-driven CM).
KW - case management
KW - metrics
KW - process mining
UR - https://www.scopus.com/pages/publications/84919711539
U2 - 10.1109/EDOCW.2014.25
DO - 10.1109/EDOCW.2014.25
M3 - Conference contribution
T3 - Proceedings - IEEE International Enterprise Distributed Object Computing Workshop, EDOCW
SP - 108
EP - 115
BT - Proceedings - IEEE 18th International Enterprise Distributed Object Computing Conference Workshops and Demonstrations, EDOCW 2014
A2 - Reichert, Manfred
A2 - Grossmann, Georg
A2 - Rinderle-Ma, Stefanie
A2 - Halle, Sylvain
A2 - Karastoyanova, Dimka
PB - Institute of Electrical and Electronics Engineers Inc.
T2 - 18th IEEE International Enterprise Distributed Object Computing Conference Workshops and Demonstrations, EDOCW 2014
Y2 - 1 September 2014 through 2 September 2014
ER -