Plausible Reasoning about EL-Ontologies using Concept Interpolation
June 25, 2020 Β· Declared Dead Β· π International Conference on Principles of Knowledge Representation and Reasoning
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Authors
YazmΓn IbÑñez-GarcΓa, VΓctor GutiΓ©rrez-Basulto, Steven Schockaert
arXiv ID
2006.14437
Category
cs.AI: Artificial Intelligence
Citations
7
Venue
International Conference on Principles of Knowledge Representation and Reasoning
Last Checked
4 months ago
Abstract
Description logics (DLs) are standard knowledge representation languages for modelling ontologies, i.e. knowledge about concepts and the relations between them. Unfortunately, DL ontologies are difficult to learn from data and time-consuming to encode manually. As a result, ontologies for broad domains are almost inevitably incomplete. In recent years, several data-driven approaches have been proposed for automatically extending such ontologies. One family of methods rely on characterizations of concepts that are derived from text descriptions. While such characterizations do not capture ontological knowledge directly, they encode information about the similarity between different concepts, which can be exploited for filling in the gaps in existing ontologies. To this end, several inductive inference mechanisms have already been proposed, but these have been defined and used in a heuristic fashion. In this paper, we instead propose an inductive inference mechanism which is based on a clear model-theoretic semantics, and can thus be tightly integrated with standard deductive reasoning. We particularly focus on interpolation, a powerful commonsense reasoning mechanism which is closely related to cognitive models of category-based induction. Apart from the formalization of the underlying semantics, as our main technical contribution we provide computational complexity bounds for reasoning in EL with this interpolation mechanism.
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