Modeling and Reasoning in Event Calculus Using Goal-Directed Constraint Answer Set Programming

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Abstract

Automated commonsense reasoning is essential for building human-like AI systems featuring, for example, explainable AI. Event Calculus (EC) is a family of formalisms that model commonsense reasoning with a sound, logical basis. Previous attempts to mechanize reasoning using EC faced difficulties in the treatment of the continuous change in dense domains (e.g., time and other physical quantities), constraints among variables, default negation, and the uniform application of different inference methods, among others. We propose the use of s(CASP), a query-driven, top-down execution model for Predicate Answer Set Programming with Constraints, to model and reason using EC. We show how EC scenarios can be naturally and directly encoded in s(CASP) and how its expressiveness makes it possible to perform deductive and abductive reasoning tasks in domains featuring, for example, constraints involving both dense time and dense fluents.

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Arias, J., Chen, Z., Carro, M., & Gupta, G. (2020). Modeling and Reasoning in Event Calculus Using Goal-Directed Constraint Answer Set Programming. In Lecture Notes in Computer Science (including subseries Lecture Notes in Artificial Intelligence and Lecture Notes in Bioinformatics) (Vol. 12042 LNCS, pp. 139–155). Springer. https://doi.org/10.1007/978-3-030-45260-5_9

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