Activity-Oriented Causal Process Mining: An End-to-End Approach Utilizing Ylearn
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Ajakirja pealkiri
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Abstrakt
In recent decades, companies have explored data-driven methods and tools to improve
their business processes. More recently, prescriptive business process analysis became
popular among data analysts and researchers. There are many studies on the use of
prescriptive algorithms for the optimization of a variety of different business processes.
Prescriptive algorithms given the historical and/or real-time data try to discover and
recommend the best actions to improve the future outcome, e.g. what existing actions in
the advertisement process need to be changed to increase the sales. One of the prescriptive
methods approaches is Causal Process Mining which uses event logs received from the
company’s information systems and then analyses them with Causal Inference algorithms
to discover and estimate these possible changes (treatments) that would affect the final
outcome. However, all event logs can differ by the variables that are logged and the
models may become dependent on the data structure. This means that each event log
requires separate variables investigation and modeling that would match the event log
data structure. Consequently, performing these activities takes time and resources. A
more generic and automated approach could be better applicable in different business
cases and give useful results without excessive analysis or model building. For this
reason, in this study, we investigate the possibility to use only case ID, activity, and
timestamp variables of the event log for the causal inference algorithms. We propose
the experimentation software artifact that includes data preparation and integrates the
existing Ylearn causal inference tool. The approach is evaluated using five real-world
event logs. Evaluation results show that causal relationships can be detected between
activities of the event log and estimated treatment effects are comparable with other
approaches.
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Märksõnad
Causal inference, Uplift modeling, Causal process mining