Discovering operational decisions from data

Authors Sam Leewis, Koen Smit, Johan Versendaal
Published in Decision
Publication date 24 oktober 2024
Research groups Betekenisvol Digitaal Innoveren
Type Article

Summary

Analyzing historical decision-related data can help support actual operational decision-making processes. Decision mining can be employed for such analysis. This paper proposes the Decision Discovery Framework (DDF) designed to develop, adapt, or select a decision discovery algorithm by outlining specific guidelines for input data usage, classifier handling, and decision model representation. This framework incorporates the use of Decision Model and Notation (DMN) for enhanced comprehensibility and normalization to simplify decision tables. The framework’s efficacy was tested by adapting the C4.5 algorithm to the DM45 algorithm. The proposed adaptations include (1) the utilization of a decision log, (2) ensure an unpruned decision tree, (3) the generation DMN, and (4) normalize decision table. Future research can focus on supporting on practitioners in modeling decisions, ensuring their decision-making is compliant, and suggesting improvements to the modeled decisions. Another future research direction is to explore the ability to process unstructured data as input for the discovery of decisions.

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On this publication contributed

  • Koen Smit | onderzoeker | lectoraat Betekenisvol Digitaal Innoveren
    Koen Smit
    • Lector
    • Research group: Betekenisvol Digitaal Innoveren
  • Johan Versendaal | lector | lectoraat Betekenisvol Digitaal Innoveren
    Johan Versendaal
    • Lector
    • Research group: Betekenisvol Digitaal Innoveren

Language Engels
Published in Decision
Year and volume 51 4
Key words Operational decision-making, Decision discovery, DMN, Decision mining, Decision discovery framework
Digital Object Identifier 10.1007/s40622-024-00402-2
Page range 417-436

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