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Process Mining Meets Causal Machine Learning: Discovering Causal Rules from Event Logs

机译:流程挖掘与因果机器学习相遇:从事件日志中发现因果规则

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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 recommendations manually produced by process mining experts.
机译:本文提出了一种分析业务流程的事件日志的方法,以便生成案例级别的治疗建议,以最大程度地提高给定结果的可能性。用户将事件日志中的属性分类为可控制和不可控制,其中前者对应于在执行流程(可能的处理)期间可以更改的属性。我们使用动作规则挖掘技术来确定在某些情况下与结果同时发生的治疗方法。由于行动规则是根据相关性而非因果关系生成的,因此我们使用因果机器学习技术(特别是提升树)来发现经过调整混杂变量后治疗对结果产生高因果关系的病例亚组。我们使用贷款申请流程的事件日志来测试这种方法的相关性,并将我们的发现与流程挖掘专家手动提出的建议进行比较。

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