FEAST: Retrieval-Augmented Multi-Hierarchical Food Classification for the FoodEx2 System
Lorenzo Molfetta, Alessio Cocchieri, Stefano Fantazzini, Giacomo Frisoni, Luca Ragazzi, Gianluca Moro

TL;DR
FEAST is a retrieval-augmented multi-hierarchical classification framework designed for the complex FoodEx2 system, improving food description coding accuracy by leveraging hierarchical structure and deep metric learning.
Contribution
It introduces a novel three-stage retrieval-augmented approach for hierarchical food classification, addressing data sparsity and complex label dependencies in FoodEx2.
Findings
Outperforms prior CNN baseline by 12-38% F1 on rare classes
Effectively handles data sparsity and fine-grained labels
Improves generalization in multilingual food classification
Abstract
Hierarchical text classification (HTC) and extreme multi-label classification (XML) tasks face compounded challenges from complex label interdependencies, data sparsity, and extreme output dimensions. These challenges are exemplified in the European Food Safety Authority's FoodEx2 system-a standardized food classification framework essential for food consumption monitoring and contaminant exposure assessment across Europe. FoodEx2 coding transforms natural language food descriptions into a set of codes from multiple standardized hierarchies, but faces implementation barriers due to its complex structure. Given a food description (e.g., "organic yogurt''), the system identifies its base term ("yogurt''), all the applicable facet categories (e.g., "production method''), and then, every relevant facet descriptors to each category (e.g., "organic production''). While existing models perform…
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Taxonomy
TopicsNutritional Studies and Diet · Consumer Attitudes and Food Labeling · Text and Document Classification Technologies
