Stage-oe-small.jpg

Inproceedings3334: Unterschied zwischen den Versionen

Aus Aifbportal
Wechseln zu:Navigation, Suche
 
(Eine dazwischenliegende Version desselben Benutzers wird nicht angezeigt)
Zeile 18: Zeile 18:
 
|Month=Juni
 
|Month=Juni
 
|Booktitle=Proceedings of the 8th Design Science Research in Information Systems and Technologies (DESRIST) Products and Prototypes Track
 
|Booktitle=Proceedings of the 8th Design Science Research in Information Systems and Technologies (DESRIST) Products and Prototypes Track
 +
|Pages=448-455
 
|Publisher=Springer
 
|Publisher=Springer
 
|Address=Helsinki
 
|Address=Helsinki
|Series=Lecture Notes in Computer Science
+
|Editor=Jan vom Brocke et al.
 +
|Series=Lecture Notes in Computer Science 7939
 
}}
 
}}
 
{{Publikation Details
 
{{Publikation Details

Aktuelle Version vom 13. Juni 2013, 13:22 Uhr


preCEP: Facilitating Predictive Event-driven Process Analytics


preCEP: Facilitating Predictive Event-driven Process Analytics



Published: 2013 Juni
Herausgeber: Jan vom Brocke et al.
Buchtitel: Proceedings of the 8th Design Science Research in Information Systems and Technologies (DESRIST) Products and Prototypes Track
Reihe: Lecture Notes in Computer Science 7939
Seiten: 448-455
Verlag: Springer
Erscheinungsort: Helsinki

Referierte Veröffentlichung

BibTeX

Kurzfassung
The earlier critical decision can be made, the more business value can be retained or even earned. The goal of this research is to reduce a decision maker’s action distance to the observation of critical events. We report on the development of the software tool preCEP that facilitates predictive event-driven process analytics (edPA). The tool enriches business activity monitoring with prediction capabilities. It is implemented by using complex event processing technology (CEP). The prediction component is trained with event log data of completed process instances. The knowledge obtained from this training, combined with event data of running process instances, allows for making predictions at intermediate execution stages on a currently running process instance’s future behavior and on process metrics. preCEP comprises a learning component, a run-time environment as well as a modeling environment, and a visualization component of the predictions.



Forschungsgruppe

Ökonomie und Technologie der eOrganisation


Forschungsgebiet

Business Intelligence, Geschäftsprozessanalyse, Complex Event Processing, Business Activity Management, Geschäftsprozessmanagement