A Monitoring and Discovery Approach for Declarative Processes Based on
Streams
- URL: http://arxiv.org/abs/2208.05364v1
- Date: Wed, 10 Aug 2022 14:25:35 GMT
- Title: A Monitoring and Discovery Approach for Declarative Processes Based on
Streams
- Authors: Andrea Burattin and Hugo A. L\'opez and Lasse Starklit
- Abstract summary: We present a discovery algorithm that extracts declarative processes as Dynamic Condition Response (DCR) graphs from event streams.
Streams are monitored to generate temporal representations of the process, later processed to generate declarative models.
- Score: 0.0
- License: http://creativecommons.org/licenses/by/4.0/
- Abstract: Process discovery is a family of techniques that helps to comprehend
processes from their data footprints. Yet, as processes change over time so
should their corresponding models, and failure to do so will lead to models
that under- or over-approximate behavior. We present a discovery algorithm that
extracts declarative processes as Dynamic Condition Response (DCR) graphs from
event streams. Streams are monitored to generate temporal representations of
the process, later processed to generate declarative models. We validated the
technique via quantitative and qualitative evaluations. For the quantitative
evaluation, we adopted an extended Jaccard similarity measure to account for
process change in a declarative setting. For the qualitative evaluation, we
showcase how changes identified by the technique correspond to real changes in
an existing process. The technique and the data used for testing are available
online.
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