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Language Model Analysis for Ontology Subsumption Inference

Investigation into pre-trained language models' understanding of OWL ontologies through new inference-based probing tasks shows moderate background knowledge encoding initially, but significant improvement with limited samples.

Year
2023
Venue
arXiv 2023
Authors
5
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arxiv.org/abs/2302.06761v3ARXIV-DEFAULT
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Abstract

Investigating whether pre-trained language models (LMs) can function as knowledge bases (KBs) has raised wide research interests recently. However, existing works focus on simple, triple-based, relational KBs, but omit more sophisticated, logic-based, conceptualised KBs such as OWL ontologies. To investigate an LM's knowledge of ontologies, we propose OntoLAMA, a set of inference-based probing tasks and datasets from ontology subsumption axioms involving both atomic and complex concepts. We conduct extensive experiments on ontologies of different domains and scales, and our results demonstrate that LMs encode relatively less background knowledge of Subsumption Inference (SI) than traditional Natural Language Inference (NLI) but can improve on SI significantly when a small number of samples are given. We will open-source our code and datasets.

Authors

5