AIJul 14, 2025

Introducing the Swiss Food Knowledge Graph: AI for Context-Aware Nutrition Recommendation

arXiv:2507.10156v14 citationsh-index: 6Proceedings of the 1st International Workshop on Multi-modal Food Computing
Originality Incremental advance
AI Analysis

This work addresses the need for centralized, context-aware nutrition information in Switzerland, though it appears incremental as it builds on existing knowledge graph and LLM techniques.

The authors tackled the problem of fragmented food information in Switzerland by creating the Swiss Food Knowledge Graph (SwissFKG), which integrates recipes, ingredients, substitutions, nutrient data, dietary restrictions, and national guidelines into a unified resource, and demonstrated its utility through a Graph-RAG application for answering nutrition queries.

AI has driven significant progress in the nutrition field, especially through multimedia-based automatic dietary assessment. However, existing automatic dietary assessment systems often overlook critical non-visual factors, such as recipe-specific ingredient substitutions that can significantly alter nutritional content, and rarely account for individual dietary needs, including allergies, restrictions, cultural practices, and personal preferences. In Switzerland, while food-related information is available, it remains fragmented, and no centralized repository currently integrates all relevant nutrition-related aspects within a Swiss context. To bridge this divide, we introduce the Swiss Food Knowledge Graph (SwissFKG), the first resource, to our best knowledge, to unite recipes, ingredients, and their substitutions with nutrient data, dietary restrictions, allergen information, and national nutrition guidelines under one graph. We establish a LLM-powered enrichment pipeline for populating the graph, whereby we further present the first benchmark of four off-the-shelf (<70 B parameter) LLMs for food knowledge augmentation. Our results demonstrate that LLMs can effectively enrich the graph with relevant nutritional information. Our SwissFKG goes beyond recipe recommendations by offering ingredient-level information such as allergen and dietary restriction information, and guidance aligned with nutritional guidelines. Moreover, we implement a Graph-RAG application to showcase how the SwissFKG's rich natural-language data structure can help LLM answer user-specific nutrition queries, and we evaluate LLM-embedding pairings by comparing user-query responses against predefined expected answers. As such, our work lays the foundation for the next generation of dietary assessment tools that blend visual, contextual, and cultural dimensions of eating.

Foundations

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