A Predictive Learning Framework for Monitoring Aggregated Performance Indicators over Business Process Events
Contributo in Atti di convegno
Data di Pubblicazione:
2018
Abstract:
In many application contexts, a business process' executions are
subject to performance constraints expressed in an aggregated form,
usually over predefined time windows, and detecting a likely violation
to such a constraint in advance could help undertake corrective
measures for preventing it. This paper illustrates a prediction-aware
event processing framework that addresses the problem of estimating
whether the process instances of a given (unfinished) windoww
will violate an aggregate performance constraint, based on the continuous
learning and application of an ensemble of models, capable
each of making and integrating two kinds of predictions: singleinstance
predictions concerning the ongoing process instances of
w, and time-series predictions concerning the "future" process instances
ofw (i.e. those that have not started yet, but will start by the
end of w). Notably, the framework can continuously update the ensemble,
fully exploiting the raw event data produced by the process
under monitoring, suitably lifted to an adequate level of abstraction.
The framework has been validated against historical event
data coming from real-life business processes, showing promising
results in terms of both accuracy and efficiency.
Tipologia CRIS:
04.01 Contributo in Atti di convegno
Keywords:
Business Process Performance; Business Process Intelligence; Data Streams
Elenco autori:
Folino, FRANCESCO PAOLO; Cuzzocrea, Alfredo; Pontieri, Luigi; Guarascio, Massimo
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