C 2012

Knowledge Extraction from Events Flows

MAHDIRAJI, Alireza Rezaei, Bruno ROSSI, Alberto SILLITTI and Giancarlo SUCCI

Basic information

Original name

Knowledge Extraction from Events Flows

Authors

MAHDIRAJI, Alireza Rezaei, Bruno ROSSI, Alberto SILLITTI and Giancarlo SUCCI

Edition

Berlin Heidelberg, Methodologies and Technologies for Networked Enterprises, p. 221-236, 18 pp. 7200, 2012

Publisher

Springer

Other information

Type of outcome

Kapitola resp. kapitoly v odborné knize

Confidentiality degree

není předmětem státního či obchodního tajemství

ISBN

978-3-642-31738-5

Tags

International impact, Reviewed
Změněno: 20/11/2019 09:59, Bruno Rossi, PhD

Abstract

V originále

In this chapter, we propose an analysis of the approaches and methods available for the automated extraction of knowledge from event flows. We specifically focus on the reconstruction of processes from automatically generated events logs. In this context, we consider that knowledge can be directly gathered by means of the reconstruction of business process models. In the ArtDECO project, we frame such approaches inside delta analysis, that is the detection of differences of the executed processes from the planned models. To this end, we provide an overview of the different techniques available for process reconstruction, and propose an approach for the detection of deviations. To show its effectiveness, we instantiate the usage to the ArtDECO case study.