Authors
Zahra Dasht Bozorgi, Irene Teinemaa, Marlon Dumas, Marcello La Rosa, Artem Polyvyanyy
Publication date
2020/10/5
Conference
2020 2nd International Conference on Process Mining (ICPM)
Pages
129-136
Publisher
IEEE
Description
This paper proposes an approach to analyze an event log of a business process in order to generate case-level recommendations of treatments that maximize the probability of a given outcome. Users classify the attributes in the event log into controllable and non-controllable, where the former correspond to attributes that can be altered during an execution of the process (the possible treatments). We use an action rule mining technique to identify treatments that co-occur with the outcome under some conditions. Since action rules are generated based on correlation rather than causation, we then use a causal machine learning technique, specifically uplift trees, to discover subgroups of cases for which a treatment has a high causal effect on the outcome after adjusting for confounding variables. We test the relevance of this approach using an event log of a loan application process and compare our findings with …
Total citations
202120222023202416211911
Scholar articles
ZD Bozorgi, I Teinemaa, M Dumas, M La Rosa… - 2020 2nd International Conference on Process Mining …, 2020