Title :
Process discovery: Automated approach for block discovery
Author :
Boushaba, Souhail ; Kabbaj, Mohammed Issam ; Bakkoury, Zohra
Author_Institution :
Department of Computer Science, AMIPS Research Group, Ecole Mohammadia (d´Ingenieurs, Mohammed V University - Agdal, Av Ibn Sina, Rabat, Morocco
Abstract :
Process mining is a set of techniques helping enterprises to avoid process modeling which is a time-consuming and error prone task. Process mining includes three topics: process discovery, conformance checking, and enhancement (IEEE Task Force on Process Mining: Process Mining Manifesto, 2012). The principle of process discovery is to extract information from event logs to capture the business process as it is being executed. Several techniques in literature (a algorithm, a+ algorithm and others) can be applied to discover a process model from a workflow log. However, as the amount of information grows exponentially, the log files (input of a process discovery algorithm) get bigger. In fact, classical techniques, which inspect relation between each couple of tasks will have problem dealing with big data. To this end, we introduced in (Boushaba et al., 2013) a new approach aiming to extract a block of tasks from event logs. In this paper, we present a new algorithm, based on a matrix representation, to detect a block of tasks. In addition, we develop an application to automate our technique.
Keywords :
Business; Complexity theory; Data mining; Filtering algorithms; Force; Indexes; Mathematical model; Block Discovery; Business Process Management; Process Discovery; Process Mining;
Conference_Titel :
Evaluation of Novel Approaches to Software Engineering (ENASE), 2014 International Conference on
Electronic_ISBN :
978-989-758-065-9