Towards Automated Process Planning and Mining
Peter Fettke, Alexander Rombach

TL;DR
This paper presents a research framework integrating AI Planning, Machine Learning, and Process Mining to automatically derive, plan, and adapt business processes based on real-time data and forecasts.
Contribution
It introduces a novel integrated approach combining these fields for automated process planning and execution.
Findings
Development of a comprehensive research framework
Automatic derivation of process models from data
Real-time adaptive process planning and execution
Abstract
AI Planning, Machine Learning and Process Mining have so far developed into separate research fields. At the same time, many interesting concepts and insights have been gained at the intersection of these areas in recent years. For example, the behavior of future processes is now comprehensively predicted with the aid of Machine Learning. For the practical application of these findings, however, it is also necessary not only to know the expected course, but also to give recommendations and hints for the achievement of goals, i.e. to carry out comprehensive process planning. At the same time, an adequate integration of the aforementioned research fields is still lacking. In this article, we present a research project in which researchers from the AI and BPM field work jointly together. Therefore, we discuss the overall research problem, the relevant fields of research and our overall…
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Taxonomy
TopicsBusiness Process Modeling and Analysis · Big Data and Business Intelligence · Data Quality and Management
