Semantic DMN: Formalizing and Reasoning About Decisions in the Presence of Background Knowledge
July 31, 2018 Β· Declared Dead Β· π Theory and Practice of Logic Programming
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Authors
Diego Calvanese, Marlon Dumas, Fabrizio Maria Maggi, Marco Montali
arXiv ID
1807.11615
Category
cs.AI: Artificial Intelligence
Citations
8
Venue
Theory and Practice of Logic Programming
Last Checked
4 months ago
Abstract
The Decision Model and Notation (DMN) is a recent OMG standard for the elicitation and representation of decision models, and for managing their interconnection with business processes. DMN builds on the notion of decision tables, and their combination into more complex decision requirements graphs (DRGs), which bridge between business process models and decision logic models. DRGs may rely on additional, external business knowledge models, whose functioning is not part of the standard. In this work, we consider one of the most important types of business knowledge, namely background knowledge that conceptually accounts for the structural aspects of the domain of interest, and propose decision knowledge bases (DKBs), which semantically combine DRGs modeled in DMN, and domain knowledge captured by means of first-order logic with datatypes. We provide a logic-based semantics for such an integration, and formalize different DMN reasoning tasks for DKBs. We then consider background knowledge formulated as a description logic ontology with datatypes, and show how the main verification tasks for DMN in this enriched setting can be formalized as standard DL reasoning services, and actually carried out in ExpTime. We discuss the effectiveness of our framework on a case study in maritime security.
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