NutriGen: Personalized Meal Plan Generator Leveraging Large Language Models to Enhance Dietary and Nutritional Adherence
- URL: http://arxiv.org/abs/2502.20601v2
- Date: Mon, 28 Apr 2025 05:39:17 GMT
- Title: NutriGen: Personalized Meal Plan Generator Leveraging Large Language Models to Enhance Dietary and Nutritional Adherence
- Authors: Saman Khamesian, Asiful Arefeen, Stephanie M. Carpenter, Hassan Ghasemzadeh,
- Abstract summary: NutriGen is a framework designed to generate personalized meal plans that align with user-defined dietary preferences and constraints.<n>Our evaluation shows that Llama 3.1 8B and GPT-3.5 Turbo achieve the lowest percentage errors of 1.55% and 3.68%, respectively.
- Score: 6.937243101289335
- License: http://creativecommons.org/licenses/by/4.0/
- Abstract: Maintaining a balanced diet is essential for overall health, yet many individuals struggle with meal planning due to nutritional complexity, time constraints, and lack of dietary knowledge. Personalized food recommendations can help address these challenges by tailoring meal plans to individual preferences, habits, and dietary restrictions. However, existing dietary recommendation systems often lack adaptability, fail to consider real-world constraints such as food ingredient availability, and require extensive user input, making them impractical for sustainable and scalable daily use. To address these limitations, we introduce NutriGen, a framework based on large language models (LLM) designed to generate personalized meal plans that align with user-defined dietary preferences and constraints. By building a personalized nutrition database and leveraging prompt engineering, our approach enables LLMs to incorporate reliable nutritional references like the USDA nutrition database while maintaining flexibility and ease-of-use. We demonstrate that LLMs have strong potential in generating accurate and user-friendly food recommendations, addressing key limitations in existing dietary recommendation systems by providing structured, practical, and scalable meal plans. Our evaluation shows that Llama 3.1 8B and GPT-3.5 Turbo achieve the lowest percentage errors of 1.55\% and 3.68\%, respectively, producing meal plans that closely align with user-defined caloric targets while minimizing deviation and improving precision. Additionally, we compared the performance of DeepSeek V3 against several established models to evaluate its potential in personalized nutrition planning.
Related papers
- Personalized Class Incremental Context-Aware Food Classification for Food Intake Monitoring Systems [3.8767314375943918]
Existing class-incremental food classification models have low accuracy for the new classes and lack personalization.
This paper introduces a personalized, class-incremental food classification model designed to overcome these challenges.
Our approach adapts itself to the new array of food classes, maintaining applicability and accuracy, both for new and existing classes by using personalization.
arXiv Detail & Related papers (2025-03-09T14:50:56Z) - NGQA: A Nutritional Graph Question Answering Benchmark for Personalized Health-aware Nutritional Reasoning [49.06840168630573]
Diet plays a critical role in human health, yet tailoring dietary reasoning to individual health conditions remains a major challenge.
Nutrition Question Answering (QA) has emerged as a popular method for addressing this problem.
We introduce the Nutritional Graph Question Answering (NGQA) benchmark, the first graph question answering dataset designed for personalized nutritional health reasoning.
arXiv Detail & Related papers (2024-12-20T04:13:46Z) - MOPI-HFRS: A Multi-objective Personalized Health-aware Food Recommendation System with LLM-enhanced Interpretation [50.309987904297415]
Major food recommendation platforms such as Yelp prioritize users' dietary preferences over the healthiness of their choices.<n>We develop a novel framework, Multi-Objective Personalized Interpretable Health-aware Food Recommendation System (MOPI-HFRS)<n>It provides food recommendations by jointly optimizing the three objectives: user preference, personalized healthiness and nutritional diversity, along with a large language model (LLM)-enhanced reasoning module.
arXiv Detail & Related papers (2024-12-12T01:02:09Z) - RoDE: Linear Rectified Mixture of Diverse Experts for Food Large Multi-Modal Models [96.43285670458803]
Uni-Food is a unified food dataset that comprises over 100,000 images with various food labels.<n>Uni-Food is designed to provide a more holistic approach to food data analysis.<n>We introduce a novel Linear Rectification Mixture of Diverse Experts (RoDE) approach to address the inherent challenges of food-related multitasking.
arXiv Detail & Related papers (2024-07-17T16:49:34Z) - NutriBench: A Dataset for Evaluating Large Language Models on Nutrition Estimation from Meal Descriptions [6.223619389512576]
NutriBench is the first publicly available natural language meal description nutrition benchmark.
It consists of 11,857 meal descriptions generated from real-world global dietary intake data.
The data is human-verified and annotated with macro-nutrient labels, including carbohydrates, proteins, fats, and calories.
arXiv Detail & Related papers (2024-07-04T15:10:51Z) - NutritionVerse-Direct: Exploring Deep Neural Networks for Multitask Nutrition Prediction from Food Images [63.314702537010355]
Self-reporting methods are often inaccurate and suffer from substantial bias.
Recent work has explored using computer vision prediction systems to predict nutritional information from food images.
This paper aims to enhance the efficacy of dietary intake estimation by leveraging various neural network architectures.
arXiv Detail & Related papers (2024-05-13T14:56:55Z) - ChatDiet: Empowering Personalized Nutrition-Oriented Food Recommender Chatbots through an LLM-Augmented Framework [2.3221599497640915]
ChatDiet is a novel framework designed specifically for personalized nutrition-oriented food recommendation chatbots.
ChatDiet integrates personal and population models, complemented by an orchestrator, to seamlessly retrieve and process pertinent information.
Our evaluation of ChatDiet includes a compelling case study, where we establish a causal personal model to estimate individual nutrition effects.
arXiv Detail & Related papers (2024-02-18T06:07:17Z) - NutritionVerse-3D: A 3D Food Model Dataset for Nutritional Intake
Estimation [65.47310907481042]
One in four older adults are malnourished.
Machine learning and computer vision show promise of automated nutrition tracking methods of food.
NutritionVerse-3D is a large-scale high-resolution dataset of 105 3D food models.
arXiv Detail & Related papers (2023-04-12T05:27:30Z) - MenuAI: Restaurant Food Recommendation System via a Transformer-based
Deep Learning Model [15.248362664235845]
A novel restaurant food recommendation system is proposed in this paper.
It uses Optical Character Recognition (OCR) technology and a transformer-based deep learning model, Learning to Rank (LTR) model.
Our system is able to rank the food dishes in terms of the input search key (e.g., calorie, protein level)
arXiv Detail & Related papers (2022-10-15T11:45:44Z) - Vision-Based Food Analysis for Automatic Dietary Assessment [49.32348549508578]
This review presents one unified Vision-Based Dietary Assessment (VBDA) framework, which generally consists of three stages: food image analysis, volume estimation and nutrient derivation.
Deep learning makes VBDA gradually move to an end-to-end implementation, which applies food images to a single network to directly estimate the nutrition.
arXiv Detail & Related papers (2021-08-06T05:46:01Z) - Personalized Food Recommendation as Constrained Question Answering over
a Large-scale Food Knowledge Graph [16.58534326000209]
We propose a novel problem formulation for food recommendation, modeling this task as constrained question answering over a large-scale food knowledge base/graph (KBQA)
Besides the requirements from the user query, personalized requirements from the user's dietary preferences and health guidelines are handled in a unified way.
Our approach significantly outperforms non-personalized counterparts.
arXiv Detail & Related papers (2021-01-05T20:38:16Z)
This list is automatically generated from the titles and abstracts of the papers in this site.
This site does not guarantee the quality of this site (including all information) and is not responsible for any consequences.