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Analysing Event Data through Process Mining

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Analysing Event Data through Process Mining

Andrea Marrella

DIAG, Sapienza University of Rome, Italy marrella@diag.uniroma1.it

Extended Abstract

Most organizations create business processes, which are sometimes difficult to control and comprehend. Understanding these processes is however an absolute prerequisite prior to taking on any improvement initiative.Process mining pro- vides a new perspective that makes easier and faster to get a complete and ob- jective picture of business processes to better control and continuously improve them, by reducing their costs, production time and risks. This is made possi- ble by analysing vast quantities of event data available in today’s information systems. Mainly, which activities are performed, when, and by whom.

In that sense, process mining sits between computational intelligence and data mining on the one hand, and business process management on the other hand. The reference framework for process mining focuses on: (i) conceptual models describing processes, organizational structures, and the corresponding relevant data; and(ii) the real execution of processes, as reflected by the foot- print of reality logged and stored by the information systems in use within an enterprise. For process mining to be applicable, such information has to be struc- tured in the form of explicit event logs. In fact, all process mining techniques assume that it is possible to record the sequencing of relevant events occurred within an enterprise, such that each event refers to an activity (i.e., a well-defined step in some process) and is related to a particular case

Through process mining, decision makers can discover process models from event logs (process discovery), compare expected and actual behaviors (confor- mance checking), and enrich models with key information about their actual ex- ecution (process enhancement). This, in turn, provides the basis to understand, maintain, and enhance processes based on reality.

In this tutorial, we introduce the process mining framework, the main process mining techniques and tools, and the different phases of event data analysis through process mining, discussing the various ways data and process analysts can make use of the mined models. Finally, we discuss common pitfalls and critical issues, and give suggestions on how to mitigate them.

Copyright c2019 for the individual papers by the papers authors. Copying permit- ted for private and academic purposes. This volume is published and copyrighted by its editors. SEBD 2019, June 16-19, 2019, Castiglione della Pescaia, Italy.

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