Influence diagrams (IDs) are well-known formalisms extending Bayesian networks to model decision situations under uncertainty. Although they are convenient as a decision theoretic tool, their knowledge representation ability is limited in capturing other crucial notions such as logical consistency. We complement IDs with the light-weight description logic (DL) ℰℲ to overcome such limitations. We consider a setup where DL axioms hold in some contexts, yet the actual context is uncertain. The framework benefits from the convenience of using DL as a domain knowledge representation language and the modelling strength of IDs to deal with decisions over contexts in the presence of contextual uncertainty. We define related reasoning problems and study their computational complexity.

Acar, E., Penaloza, R. (2020). Reasoning with contextual knowledge and influence diagrams. In 17th International Conference on Principles of Knowledge Representation and Reasoning, KR 2020 (pp.11-20). International Joint Conference on Artificial Intelligence (IJCAI).

Reasoning with contextual knowledge and influence diagrams

Penaloza R.
2020

Abstract

Influence diagrams (IDs) are well-known formalisms extending Bayesian networks to model decision situations under uncertainty. Although they are convenient as a decision theoretic tool, their knowledge representation ability is limited in capturing other crucial notions such as logical consistency. We complement IDs with the light-weight description logic (DL) ℰℲ to overcome such limitations. We consider a setup where DL axioms hold in some contexts, yet the actual context is uncertain. The framework benefits from the convenience of using DL as a domain knowledge representation language and the modelling strength of IDs to deal with decisions over contexts in the presence of contextual uncertainty. We define related reasoning problems and study their computational complexity.
paper
knowledge representation; decision theory; influence diagrams; expected utility
English
17th International Conference on Principles of Knowledge Representation and Reasoning, KR 2020
2020
Calvanese, D; Erdem, E; Thielscher, M;
17th International Conference on Principles of Knowledge Representation and Reasoning, KR 2020
978-171382598-2
2020
1
11
20
open
Acar, E., Penaloza, R. (2020). Reasoning with contextual knowledge and influence diagrams. In 17th International Conference on Principles of Knowledge Representation and Reasoning, KR 2020 (pp.11-20). International Joint Conference on Artificial Intelligence (IJCAI).
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Utilizza questo identificativo per citare o creare un link a questo documento: https://hdl.handle.net/10281/318695
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