TY - GEN
T1 - Inductive context-aware process discovery
AU - Shraga, Roee
AU - Gal, Avigdor
AU - Schumacher, Dafna
AU - Senderovich, Arik
AU - Weidlich, Matthias
N1 - Publisher Copyright:
© 2019 IEEE.
PY - 2019/6
Y1 - 2019/6
N2 - Discovery plays a key role in data-driven analysis of business processes. The vast majority of contemporary discovery algorithms aims at the identification of control-flow constructs. The increase in data richness, however, enables discovery that incorporates the context of process execution beyond the control-flow perspective. A 'control-flow first' approach, where context data serves for refinement and annotation, is limited and fails to detect fundamental changes in the control-flow that depend on context data. In this work, we thus propose a novel approach for combining the control-flow and data perspectives under a single roof by extending inductive process discovery. Our approach provides criteria under which context data, handled through unsupervised learning, take priority over control-flow in guiding process discovery. The resulting model is a process tree, in which some operators carry data semantics instead of control-flow semantics. We evaluate the approach using synthetic and real-world datasets and show that the resulting models are superior to state-of-the-art discovery methods in terms of measures that are based on multi perspective alignments.
AB - Discovery plays a key role in data-driven analysis of business processes. The vast majority of contemporary discovery algorithms aims at the identification of control-flow constructs. The increase in data richness, however, enables discovery that incorporates the context of process execution beyond the control-flow perspective. A 'control-flow first' approach, where context data serves for refinement and annotation, is limited and fails to detect fundamental changes in the control-flow that depend on context data. In this work, we thus propose a novel approach for combining the control-flow and data perspectives under a single roof by extending inductive process discovery. Our approach provides criteria under which context data, handled through unsupervised learning, take priority over control-flow in guiding process discovery. The resulting model is a process tree, in which some operators carry data semantics instead of control-flow semantics. We evaluate the approach using synthetic and real-world datasets and show that the resulting models are superior to state-of-the-art discovery methods in terms of measures that are based on multi perspective alignments.
KW - Business Process Discovery
KW - Data Analysis
KW - Unsupervised Learning
UR - http://www.scopus.com/inward/record.url?scp=85071162152&partnerID=8YFLogxK
U2 - 10.1109/ICPM.2019.00016
DO - 10.1109/ICPM.2019.00016
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AN - SCOPUS:85071162152
T3 - Proceedings - 2019 International Conference on Process Mining, ICPM 2019
SP - 33
EP - 40
BT - Proceedings - 2019 International Conference on Process Mining, ICPM 2019
T2 - 1st International Conference on Process Mining, ICPM 2019
Y2 - 24 June 2019 through 26 June 2019
ER -