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Fine-tuning Large Enterprise Language Models via Ontological Reasoning

Authors :
Baldazzi, Teodoro
Bellomarini, Luigi
Ceri, Stefano
Colombo, Andrea
Gentili, Andrea
Sallinger, Emanuel
Publication Year :
2023

Abstract

Large Language Models (LLMs) exploit fine-tuning as a technique to adapt to diverse goals, thanks to task-specific training data. Task specificity should go hand in hand with domain orientation, that is, the specialization of an LLM to accurately address the tasks of a given realm of interest. However, models are usually fine-tuned over publicly available data or, at most, over ground data from databases, ignoring business-level definitions and domain experience. On the other hand, Enterprise Knowledge Graphs (EKGs) are able to capture and augment such domain knowledge via ontological reasoning. With the goal of combining LLM flexibility with the domain orientation of EKGs, we propose a novel neurosymbolic architecture that leverages the power of ontological reasoning to build task- and domain-specific corpora for LLM fine-tuning.<br />Comment: Accepted at RuleML 2023

Details

Database :
arXiv
Publication Type :
Report
Accession number :
edsarx.2306.10723
Document Type :
Working Paper