Lanzinger, M., Sferrazza, S., & Gottlob, G. (2022). New Perspectives for Fuzzy Datalog (Extended Abstract). In Proceedings of the 4th International Workshop on the Resurgence of Datalog in Academia and Industry (Datalog-2.0 2022) co-located with the 16th International Conference on Logic Programming and Nonmonotonic Reasoning (LPNMR} 2022) (pp. 42–47). http://hdl.handle.net/20.500.12708/175762
E192-02 - Forschungsbereich Databases and Artificial Intelligence
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Published in:
Proceedings of the 4th International Workshop on the Resurgence of Datalog in Academia and Industry (Datalog-2.0 2022) co-located with the 16th International Conference on Logic Programming and Nonmonotonic Reasoning (LPNMR} 2022)
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Date (published):
2022
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Event name:
Datalog 2.0 2022: 4th International Workshop on the Resurgence of Datalog in Academia and Industry
Fuzzy logic has a long history as a tool for combining logical reasoning with the different types of uncertainty that are encountered in real-world settings by interpreting degrees of certainty as degrees of truth. This naturally motivates the study of Datalog with fuzzy logic semantics as a reasoning formalism for large databases and KGs with uncertainty. Many variants of fuzzy logic programming have been proposed in the literature [2 , 3 , 4 , 5 , 6 , 7 ], with the most active research focusing on complex multi-adjoint settings [8 , 7 ], or Prolog-derived semantics based on fuzzy similarity of constants and fuzzy unification procedures [ 5 ].
Alternative frameworks for reasoning with uncertainty like Markov Logic Networks [9 ] and Probabilistic Soft Logic [10] require extensive grounding before inference that can quickly become prohibitive when reasoning over large amounts of data. Our proposed language 𝑡-Datalog aims to be a simpler alternative focused on effective reasoning in large databases and KGs with uncertainty and aims to be the fuzzy analogue of standard Datalog. In this paper, we present the 𝑡-Datalog formalism and report on ongoing research.
In particular, we present a simple and efficient fixpoint procedure for computing minimal fuzzy models for 𝑡-Datalog. Furthermore, we show how Datalog with fuzzy semantics relates to the recently proposed Datalog∘ formalism [11]
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Project title:
HyperTrac: hypergraph Decompositions and Tractability: P30930-N35 (FWF Fonds zur Förderung der wissenschaftlichen Forschung (FWF))