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Main Authors: Drole, Jan, Gjorgjevikj, Ana, Seljak, Barbara Korouši'c, Eftimov, Tome
Format: Preprint
Published: 2026
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Online Access:https://arxiv.org/abs/2603.09758
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author Drole, Jan
Gjorgjevikj, Ana
Seljak, Barbara Korouši'c
Eftimov, Tome
author_facet Drole, Jan
Gjorgjevikj, Ana
Seljak, Barbara Korouši'c
Eftimov, Tome
contents Standardizing food terms from product labels and menus into ontology concepts is a prerequisite for trustworthy dietary assessment and safety reporting. The dominant approach to Named Entity Linking (NEL) in the food and nutrition domains fine-tunes Large Language Models (LLMs) on task-specific corpora. Although effective, fine-tuning incurs substantial computational cost, ties models to a particular ontology snapshot (i.e., version), and degrades under ontology drift. This paper presents FoodOntoRAG, a model- and ontology-agnostic pipeline that performs few-shot NEL by retrieving candidate entities from domain ontologies and conditioning an LLM on structured evidence (food labels, synonyms, definitions, and relations). A hybrid lexical--semantic retriever enumerates candidates; a selector agent chooses a best match with rationale; a separate scorer agent calibrates confidence; and, when confidence falls below a threshold, a synonym generator agent proposes reformulations to re-enter the loop. The pipeline approaches state-of-the-art accuracy while revealing gaps and inconsistencies in existing annotations. The design avoids fine-tuning, improves robustness to ontology evolution, and yields interpretable decisions through grounded justifications.
format Preprint
id arxiv_https___arxiv_org_abs_2603_09758
institution arXiv
publishDate 2026
record_format arxiv
spellingShingle Beyond Fine-Tuning: Robust Food Entity Linking under Ontology Drift with FoodOntoRAG
Drole, Jan
Gjorgjevikj, Ana
Seljak, Barbara Korouši'c
Eftimov, Tome
Computation and Language
Standardizing food terms from product labels and menus into ontology concepts is a prerequisite for trustworthy dietary assessment and safety reporting. The dominant approach to Named Entity Linking (NEL) in the food and nutrition domains fine-tunes Large Language Models (LLMs) on task-specific corpora. Although effective, fine-tuning incurs substantial computational cost, ties models to a particular ontology snapshot (i.e., version), and degrades under ontology drift. This paper presents FoodOntoRAG, a model- and ontology-agnostic pipeline that performs few-shot NEL by retrieving candidate entities from domain ontologies and conditioning an LLM on structured evidence (food labels, synonyms, definitions, and relations). A hybrid lexical--semantic retriever enumerates candidates; a selector agent chooses a best match with rationale; a separate scorer agent calibrates confidence; and, when confidence falls below a threshold, a synonym generator agent proposes reformulations to re-enter the loop. The pipeline approaches state-of-the-art accuracy while revealing gaps and inconsistencies in existing annotations. The design avoids fine-tuning, improves robustness to ontology evolution, and yields interpretable decisions through grounded justifications.
title Beyond Fine-Tuning: Robust Food Entity Linking under Ontology Drift with FoodOntoRAG
topic Computation and Language
url https://arxiv.org/abs/2603.09758