School of Mathematics and Statistics, University of New South Wales, Sydney, NSW, Australia.
Centre for Machine Vision and Signal Processing, Faculty of Information Technology, University of Oulu, Oulu, Finland.
Comput Biol Med. 2024 Feb;169:107882. doi: 10.1016/j.compbiomed.2023.107882. Epub 2023 Dec 23.
Recommender systems (RS) have been increasingly applied to food and health. However, challenges still remain, including the effective incorporation of heterogeneous information and the discovery of meaningful relationships among entities in the context of food and health recommendations. To address these challenges, we propose a novel framework, the Health-aware Food Recommendation System with Dual Attention in Heterogeneous Graphs (HFRS-DA), for unsupervised representation learning on heterogeneous graph-structured data. HFRS-DA utilizes an attention technique to reconstruct node features and edges and employs a dual hierarchical attention mechanism for enhanced unsupervised learning of attributed graph representations. HFRS-DA addresses the challenge of effectively leveraging the heterogeneous information in the graph and discovering meaningful semantic relationships between entities. The framework analyses recipe components and their neighbours in the heterogeneous graph and can discover popular and healthy recipes, thereby promoting healthy eating habits. We compare HFRS-DA using the Allrecipes dataset and find that it outperforms all the related methods from the literature. Our study demonstrates that HFRS-DA enhances the unsupervised learning of attributed graph representations, which is important in scenarios where labelled data is scarce or unavailable. HFRS-DA can generate node embeddings for unused data effectively, enabling both inductive and transductive learning.
推荐系统 (RS) 在食品和健康领域的应用日益广泛。然而,仍存在一些挑战,包括如何在食品和健康推荐的背景下有效整合异构信息以及发现实体之间有意义的关系。为了解决这些挑战,我们提出了一种新颖的框架,即基于异构图的双重注意力健康感知食物推荐系统 (HFRS-DA),用于对异构图结构化数据进行无监督表示学习。HFRS-DA 利用注意力技术重构节点特征和边,并采用双重层次注意力机制,增强属性图表示的无监督学习。HFRS-DA 解决了有效利用图中的异构信息以及发现实体之间有意义语义关系的挑战。该框架分析异构图中的食谱成分及其邻居,并可以发现流行且健康的食谱,从而促进健康的饮食习惯。我们使用 Allrecipes 数据集对 HFRS-DA 进行了比较,发现它优于文献中的所有相关方法。我们的研究表明,HFRS-DA 增强了属性图表示的无监督学习,这在标签数据稀缺或不可用时非常重要。HFRS-DA 可以有效地为未使用的数据生成节点嵌入,实现归纳学习和转导学习。