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Main Authors: Wang, Yibin, Yang, Yanjie, Guerrero, Grace Melo, Nayga Jr., Rodolfo M., Zahid, Azlan
Format: Preprint
Published: 2026
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Online Access:https://arxiv.org/abs/2605.15213
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author Wang, Yibin
Yang, Yanjie
Guerrero, Grace Melo
Nayga Jr., Rodolfo M.
Zahid, Azlan
author_facet Wang, Yibin
Yang, Yanjie
Guerrero, Grace Melo
Nayga Jr., Rodolfo M.
Zahid, Azlan
contents Diet quality is a leading determinant of chronic disease risk. Advances in artificial intelligence (AI) have enabled food recommendation systems to adapt suggestions to user preferences and health goals. However, most current systems rely on loosely curated food databases and provide limited connection to a validated index. In this study, we propose a Healthy Eating Index (HEI) informed retrieval-augmented generation (RAG) framework that combines standardized nutrition databases with large language models (LLMs) for personalized food recommendations. Our proposed method anchors retrieval in the National Health and Nutrition Examination Survey (NHANES) and the Food Patterns Equivalents Database (FPED). A food-level embedding space is constructed from FPED-derived textual descriptions. For each entity, the system computes baseline HEI scores, retrieves candidate foods for intake recommendations, and estimates the HEI impact of simple substitutions or additions. A constrained RAG pipeline instantiated with a pretrained OpenAI LLM generates personalized recommendations and sources based on nutrient profiles and HEI contributions. The simulation results showed a mean HEI improvement of 6.45, with the proportion of users HEI over 50 increasing from 45.12 to 61.26. Quantile analysis revealed consistent improved shifts across the HEI distribution. Our findings suggest that the proposed LLM-RAG-based AI systems can support more precise, explainable, and personalized nutrition guidance to improve diet quality.
format Preprint
id arxiv_https___arxiv_org_abs_2605_15213
institution arXiv
publishDate 2026
record_format arxiv
spellingShingle An LLM-RAG Approach for Healthy Eating Index-Informed Personalized Food Recommendations
Wang, Yibin
Yang, Yanjie
Guerrero, Grace Melo
Nayga Jr., Rodolfo M.
Zahid, Azlan
Information Retrieval
Artificial Intelligence
Diet quality is a leading determinant of chronic disease risk. Advances in artificial intelligence (AI) have enabled food recommendation systems to adapt suggestions to user preferences and health goals. However, most current systems rely on loosely curated food databases and provide limited connection to a validated index. In this study, we propose a Healthy Eating Index (HEI) informed retrieval-augmented generation (RAG) framework that combines standardized nutrition databases with large language models (LLMs) for personalized food recommendations. Our proposed method anchors retrieval in the National Health and Nutrition Examination Survey (NHANES) and the Food Patterns Equivalents Database (FPED). A food-level embedding space is constructed from FPED-derived textual descriptions. For each entity, the system computes baseline HEI scores, retrieves candidate foods for intake recommendations, and estimates the HEI impact of simple substitutions or additions. A constrained RAG pipeline instantiated with a pretrained OpenAI LLM generates personalized recommendations and sources based on nutrient profiles and HEI contributions. The simulation results showed a mean HEI improvement of 6.45, with the proportion of users HEI over 50 increasing from 45.12 to 61.26. Quantile analysis revealed consistent improved shifts across the HEI distribution. Our findings suggest that the proposed LLM-RAG-based AI systems can support more precise, explainable, and personalized nutrition guidance to improve diet quality.
title An LLM-RAG Approach for Healthy Eating Index-Informed Personalized Food Recommendations
topic Information Retrieval
Artificial Intelligence
url https://arxiv.org/abs/2605.15213