Improving healthy food recommender systems through heterogeneous hypergraph learning

Recommender systems in health-conscious recipe suggestions have evolved rapidly, particularly with the integration of both homogeneous and heterogeneous graphs. However, incorporating IoT devices into healthcare, such as wearable fitness trackers and smart nutrition scales, presents new challenges....

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Published in:EGYPTIAN INFORMATICS JOURNAL
Main Authors: Wang, Jing; Zhou, Jincheng; Aksoy, Muammer; Sharma, Nidhi; Rahman, Md Arafatur; Zain, Jasni Mohamad; Alenazi, Mohammed J. F.; Aminzadeh, Aliyeh
Format: Article
Language:English
Published: CAIRO UNIV, FAC COMPUTERS & INFORMATION 2024
Subjects:
Online Access:https://www-webofscience-com.uitm.idm.oclc.org/wos/woscc/full-recordWOS:001367730700001
author Wang
Jing; Zhou
Jincheng; Aksoy
Muammer; Sharma
Nidhi; Rahman
Md Arafatur; Zain
Jasni Mohamad; Alenazi
Mohammed J. F.; Aminzadeh
Aliyeh
spellingShingle Wang
Jing; Zhou
Jincheng; Aksoy
Muammer; Sharma
Nidhi; Rahman
Md Arafatur; Zain
Jasni Mohamad; Alenazi
Mohammed J. F.; Aminzadeh
Aliyeh
Improving healthy food recommender systems through heterogeneous hypergraph learning
Computer Science
author_facet Wang
Jing; Zhou
Jincheng; Aksoy
Muammer; Sharma
Nidhi; Rahman
Md Arafatur; Zain
Jasni Mohamad; Alenazi
Mohammed J. F.; Aminzadeh
Aliyeh
author_sort Wang
spelling Wang, Jing; Zhou, Jincheng; Aksoy, Muammer; Sharma, Nidhi; Rahman, Md Arafatur; Zain, Jasni Mohamad; Alenazi, Mohammed J. F.; Aminzadeh, Aliyeh
Improving healthy food recommender systems through heterogeneous hypergraph learning
EGYPTIAN INFORMATICS JOURNAL
English
Article
Recommender systems in health-conscious recipe suggestions have evolved rapidly, particularly with the integration of both homogeneous and heterogeneous graphs. However, incorporating IoT devices into healthcare, such as wearable fitness trackers and smart nutrition scales, presents new challenges. These devices generate vast amounts of dynamic, personalized data, which traditional Graph Neural Network (GNN) models - limited to simple pairwise connections - fail to capture effectively. For example, IoT sensors tracking daily nutrient intake require complex, multi-faceted analysis that traditional methods struggle to handle. To overcome these limitations, researchers have employed hypergraphs, which capture higher-order relationships among nodes, such as user-food and ingredient interactions. Traditional methods using static weights in the Laplacian hypergraph, inspired by homogeneous graph techniques, often fail to account for users' evolving health interests. Our study introduces a novel approach for recommending healthy foods by leveraging user-food and food-ingredient hyperedges, integrating both convolution and attention-based hypergraph mechanisms to dynamically adjust weights based on user similarities. Unlike previous methods, we convert the heterogeneous hypergraph into a homogeneous space, using a unified loss function to generate recommendations that adapt to individual users' changing dietary preferences. The model is evaluated on five metrics - AUC, NDCG, Precision, Recall, and F1-score - and shows superior performance compared to existing models on two real-world food datasets, Allrecipes and Food.com. Our results demonstrate significant improvements in recommendation accuracy and personalization, showcasing the system's effectiveness in integrating IoT data for more responsive, health-focused food suggestions.
CAIRO UNIV, FAC COMPUTERS & INFORMATION
1110-8665
2090-4754
2024
28

10.1016/j.eij.2024.100570
Computer Science

WOS:001367730700001
https://www-webofscience-com.uitm.idm.oclc.org/wos/woscc/full-recordWOS:001367730700001
title Improving healthy food recommender systems through heterogeneous hypergraph learning
title_short Improving healthy food recommender systems through heterogeneous hypergraph learning
title_full Improving healthy food recommender systems through heterogeneous hypergraph learning
title_fullStr Improving healthy food recommender systems through heterogeneous hypergraph learning
title_full_unstemmed Improving healthy food recommender systems through heterogeneous hypergraph learning
title_sort Improving healthy food recommender systems through heterogeneous hypergraph learning
container_title EGYPTIAN INFORMATICS JOURNAL
language English
format Article
description Recommender systems in health-conscious recipe suggestions have evolved rapidly, particularly with the integration of both homogeneous and heterogeneous graphs. However, incorporating IoT devices into healthcare, such as wearable fitness trackers and smart nutrition scales, presents new challenges. These devices generate vast amounts of dynamic, personalized data, which traditional Graph Neural Network (GNN) models - limited to simple pairwise connections - fail to capture effectively. For example, IoT sensors tracking daily nutrient intake require complex, multi-faceted analysis that traditional methods struggle to handle. To overcome these limitations, researchers have employed hypergraphs, which capture higher-order relationships among nodes, such as user-food and ingredient interactions. Traditional methods using static weights in the Laplacian hypergraph, inspired by homogeneous graph techniques, often fail to account for users' evolving health interests. Our study introduces a novel approach for recommending healthy foods by leveraging user-food and food-ingredient hyperedges, integrating both convolution and attention-based hypergraph mechanisms to dynamically adjust weights based on user similarities. Unlike previous methods, we convert the heterogeneous hypergraph into a homogeneous space, using a unified loss function to generate recommendations that adapt to individual users' changing dietary preferences. The model is evaluated on five metrics - AUC, NDCG, Precision, Recall, and F1-score - and shows superior performance compared to existing models on two real-world food datasets, Allrecipes and Food.com. Our results demonstrate significant improvements in recommendation accuracy and personalization, showcasing the system's effectiveness in integrating IoT data for more responsive, health-focused food suggestions.
publisher CAIRO UNIV, FAC COMPUTERS & INFORMATION
issn 1110-8665
2090-4754
publishDate 2024
container_volume 28
container_issue
doi_str_mv 10.1016/j.eij.2024.100570
topic Computer Science
topic_facet Computer Science
accesstype
id WOS:001367730700001
url https://www-webofscience-com.uitm.idm.oclc.org/wos/woscc/full-recordWOS:001367730700001
record_format wos
collection Web of Science (WoS)
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