The aim of process discovery is to build a process model from an event log without prior information about the process. The discovery of declarative process models is useful when a process works in an unpredictable and unstable environment since several allowed paths can be represented as a compact set of rules. One of the tools available in the literature for discovering declarative models from logs is the Declare Miner, a plug-in of the process mining tool ProM. Using this plug-in, the discovered models are represented using Declare, a declarative process modelling language based on LTL for finite traces. In this paper, we use a combination of an Apriori algorithm and a group of algorithms for Sequence Analysis to improve the performances of the Declare Miner. Using synthetic and real life event logs, we show that the new implemented core of the plug-in allows for a significant performance improvement.

The aim of process discovery is to build a process model from an event log without prior information about the process. The discovery of declarative process models is useful when a process works in an unpredictable and unstable environment since several allowed paths can be represented as a compact set of rules. One of the tools available in the literature for discovering declarative models from logs is the Declare Miner, a plug-in of the process mining tool ProM. Using this plug-in, the discovered models are represented using Declare, a declarative process modelling language based on LTL for finite traces. In this paper, we use a combination of an Apriori algorithm and a group of algorithms for Sequence Analysis to improve the performances of the Declare Miner. Using synthetic and real life event logs, we show that the new implemented core of the plug-in allows for a significant performance improvement.

Apriori and Sequence Analysis for Discovering Declarative Process Models / Kala, Taavi; Maggi, Fabrizio Maria; Di Ciccio, Claudio; Di Francescomarino, Chiara. - (2016), pp. 50-58. ( 20th IEEE International Enterprise Distributed Object Computing Conference, EDOC 2016 Vienna, Austria September 5-9, 2016) [10.1109/EDOC.2016.7579378].

Apriori and Sequence Analysis for Discovering Declarative Process Models

Di Francescomarino, Chiara
2016-01-01

Abstract

The aim of process discovery is to build a process model from an event log without prior information about the process. The discovery of declarative process models is useful when a process works in an unpredictable and unstable environment since several allowed paths can be represented as a compact set of rules. One of the tools available in the literature for discovering declarative models from logs is the Declare Miner, a plug-in of the process mining tool ProM. Using this plug-in, the discovered models are represented using Declare, a declarative process modelling language based on LTL for finite traces. In this paper, we use a combination of an Apriori algorithm and a group of algorithms for Sequence Analysis to improve the performances of the Declare Miner. Using synthetic and real life event logs, we show that the new implemented core of the plug-in allows for a significant performance improvement.
2016
2016 IEEE 20th International Enterprise Distributed Object Computing Conference (EDOC)
345 E 47TH ST, NEW YORK, NY 10017 USA
IEEE Computer Society
978-1-4673-9885-5
Kala, Taavi; Maggi, Fabrizio Maria; Di Ciccio, Claudio; Di Francescomarino, Chiara
Apriori and Sequence Analysis for Discovering Declarative Process Models / Kala, Taavi; Maggi, Fabrizio Maria; Di Ciccio, Claudio; Di Francescomarino, Chiara. - (2016), pp. 50-58. ( 20th IEEE International Enterprise Distributed Object Computing Conference, EDOC 2016 Vienna, Austria September 5-9, 2016) [10.1109/EDOC.2016.7579378].
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Utilizza questo identificativo per citare o creare un link a questo documento: https://hdl.handle.net/11572/362706
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