Pa­per ac­cep­ted at the IJ­CAI-25 (In­ter­na­tion­al Joint Con­fer­ence on Ar­ti­fi­cial In­tel­li­gence)

The paper "Inconsistency Handling in DatalogMTL" by our colleague Atefe Khodadaditaghanaki was accepted at the International Joint Conference on Artificial Intelligence 2025 (IJCAI-25).

A link to the conference will follow.

Abstract


In this paper, we explore the issue of inconsistency handling in DatalogMTL, an extension of Datalog with metric temporal operators. Since facts are associated with time intervals, there are different manners to restore consistency when they contradict the rules, such as removing facts or modifying their time intervals. Our first contribution is the definition of relevant notions of conflicts (minimal explanations for inconsistency) and repairs (possible ways of restoring consistency) for this setting and the study of the properties of these notions and the associated inconsistency-tolerant semantics. Our second contribution is a data complexity analysis of the tasks of generating a single conflict / repair and query entailment under repair-based semantics.