Predictive process monitoring is concerned with exploiting event logs to predict how running (uncompleted) cases will unfold up to their completion. In this paper, we propose an implementation in the ProM toolset of a predictive process monitoring framework for estimating the probability that an ongoing case will lead to a certain outcome among a set of possible outcomes. An outcome refers to a label associated to completed cases, like, for example, a label indicating that a given case completed "on time" (with respect to a given desired duration) or "late", or a label indicating that a given case led to a customer complaint or not. The framework takes into account both the sequence of events observed in the current trace, as well as data attributes associated to these events. The prediction problem is approached in two phases. First, prefixes of previous traces are clustered according to control flow information. Secondly, a classifier is built for each cluster to discriminate among a...

Predictive process monitoring is concerned with exploiting event logs to predict how running (uncompleted) cases will unfold up to their completion. In this paper, we propose an implementation in the ProM toolset of a predictive process monitoring framework for estimating the probability that an ongoing case will lead to a certain outcome among a set of possible outcomes. An outcome refers to a label associated to completed cases, like, for example, a label indicating that a given case completed " on time " (with respect to a given desired duration) or " late " , or a label indicating that a given case led to a customer complaint or not. The framework takes into account both the sequence of events observed in the current trace, as well as data attributes associated to these events. The prediction problem is approached in two phases. First, prefixes of previous traces are clustered according to control flow information. Secondly , a classifier is built for each cluster to discriminate among a set of possible outcomes. At runtime, a prediction is made on a running case by mapping it to a cluster and applying the corresponding classifier.

A ProM Operational Support Provider for Predictive Monitoring of Business Processes / Federici, Marco; Rizzi, Williams; Di Francescomarino, Chiara; Dumas, Marlon; Ghidini, Chiara; Maggi, Fabrizio Maria; Teinemaa, Irene. - 1418:1(2015), pp. 1-5. ( BPM Demo Session 2015, BPMD 2015 - co-located with the 13th International Conference on Business Process Management, BPM 2015 Innsbruck, Austria September 2, 2015).

A ProM Operational Support Provider for Predictive Monitoring of Business Processes

Rizzi, Williams;Di Francescomarino, Chiara;Ghidini, Chiara;
2015-01-01

Abstract

Predictive process monitoring is concerned with exploiting event logs to predict how running (uncompleted) cases will unfold up to their completion. In this paper, we propose an implementation in the ProM toolset of a predictive process monitoring framework for estimating the probability that an ongoing case will lead to a certain outcome among a set of possible outcomes. An outcome refers to a label associated to completed cases, like, for example, a label indicating that a given case completed "on time" (with respect to a given desired duration) or "late", or a label indicating that a given case led to a customer complaint or not. The framework takes into account both the sequence of events observed in the current trace, as well as data attributes associated to these events. The prediction problem is approached in two phases. First, prefixes of previous traces are clustered according to control flow information. Secondly, a classifier is built for each cluster to discriminate among a...
2015
Proceedings of the BPM Demo Session 2015 Co-located with the 13th International Conference on Business Process Management (BPM 2015)
Innsbruck, Austria
CEUR-WS
Federici, Marco; Rizzi, Williams; Di Francescomarino, Chiara; Dumas, Marlon; Ghidini, Chiara; Maggi, Fabrizio Maria; Teinemaa, Irene
A ProM Operational Support Provider for Predictive Monitoring of Business Processes / Federici, Marco; Rizzi, Williams; Di Francescomarino, Chiara; Dumas, Marlon; Ghidini, Chiara; Maggi, Fabrizio Maria; Teinemaa, Irene. - 1418:1(2015), pp. 1-5. ( BPM Demo Session 2015, BPMD 2015 - co-located with the 13th International Conference on Business Process Management, BPM 2015 Innsbruck, Austria September 2, 2015).
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Utilizza questo identificativo per citare o creare un link a questo documento: https://hdl.handle.net/11572/362680
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