Object-centric Process Predictive Analytics
- URL: http://arxiv.org/abs/2203.02801v1
- Date: Sat, 5 Mar 2022 18:46:10 GMT
- Title: Object-centric Process Predictive Analytics
- Authors: Riccardo Galanti, Massimiliano de Leoni, Nicol\`o Navarin, Alan
Marazzi
- Abstract summary: Object-centric processes are implementations of a paradigm where an instance of one process is not executed in isolation but interacts with other instances of the same or other processes.
This paper proposes an approach to incorporate the information about the object interactions into the predictive analytics.
- Score: 0.5161531917413706
- License: http://creativecommons.org/licenses/by/4.0/
- Abstract: Object-centric processes (a.k.a. Artifact-centric processes) are
implementations of a paradigm where an instance of one process is not executed
in isolation but interacts with other instances of the same or other processes.
Interactions take place through bridging events where instances exchange data.
Object-centric processes are recently gaining popularity in academia and
industry, because their nature is observed in many application scenarios. This
poses significant challenges in predictive analytics due to the complex
intricacy of the process instances that relate to each other via many-to-many
associations. Existing research is unable to directly exploit the benefits of
these interactions, thus limiting the prediction quality. This paper proposes
an approach to incorporate the information about the object interactions into
the predictive models. The approach is assessed on real-life object-centric
process event data, using different KPIs. The results are compared with a naive
approach that overlooks the object interactions, thus illustrating the benefits
of their use on the prediction quality.
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