Topological Data Analysis and Graph-Based Learning for Multimodal Recommendation

被引:0
作者
Bachiri, Khalil [1 ,2 ]
Yahyaouy, Ali [2 ,3 ]
Malek, Maria [1 ]
Rogovschi, Nicoleta [4 ]
机构
[1] CY Cergy Paris Univ, ETIS Lab, ENSEA, UMR8051,CNRS, F-95011 Cergy Pontoise, France
[2] Sidi Mohamed Ben Abdellah Univ, Fac Sci Dhar El Mahraz, L3IA Lab, Fes 30003, Morocco
[3] Sorbonne Paris Nord Univ, LaMSN La Maison Sci Numer, F-93210 St Denis, France
[4] Univ Paris Cite, LIPADE Lab, F-75006 Paris, France
关键词
Feature extraction; Recommender systems; Data analysis; Machine learning; Data mining; Noise; Filtration; Collaborative filtering; Faces; Data models; Multimodal recommendation systems; topological data analysis (TDA); persistent homology; graph neural networks (GNNs); representation learning; multimodal fusion; PERSISTENCE;
D O I
10.1109/ACCESS.2025.3582480
中图分类号
TP [自动化技术、计算机技术];
学科分类号
0812 ;
摘要
Multimodal recommendation systems are becoming increasingly vital for delivering personalized content by utilizing various data sources, including text, images, and user interaction histories. However, current multimodal methods face challenges such as modality heterogeneity, data sparsity, and feature redundancy, which can result in less effective performance when dealing with complex, high-dimensional datasets. In this study, we present a new framework that combines Topological Data Analysis (TDA) with graph-based learning to improve multimodal recommendations (TDA-MMRec). Our approach captures higher-order dependencies and global structural patterns in multimodal data, enhancing the robustness and expressiveness of the representations we learn. By using persistent homology, we extract topological descriptors that convey stable structural information across different modalities, addressing the issues of sparsity and redundancy. We also introduce a modality-aware strategy for constructing graphs, which integrates features derived from TDA into multimodal similarity graphs to maintain both local and global structural properties. Furthermore, we propose a topological pruning technique that refines graph structures by removing redundant connections while preserving essential topological information, enhancing computational efficiency. Extensive experiments on large-scale multimodal datasets indicate that our TDA-augmented framework significantly outperforms leading multimodal recommendation models on key ranking metrics, including Precision@20, Recall@20, and NDCG@20. Our ablation studies confirm that topological descriptors are essential in boosting representation learning, especially in cold-start scenarios where traditional methods struggle due to data sparsity.
引用
收藏
页码:108934 / 108954
页数:21
相关论文
共 41 条
[11]  
Chazal F, 2015, PR MACH LEARN RES, V37, P2143
[12]   Stability of persistence diagrams [J].
Cohen-Steiner, David ;
Edelsbrunner, Herbert ;
Harer, John .
DISCRETE & COMPUTATIONAL GEOMETRY, 2007, 37 (01) :103-120
[13]   Topological persistence and simplification [J].
Edelsbrunner, H ;
Letscher, D ;
Zomorodian, A .
DISCRETE & COMPUTATIONAL GEOMETRY, 2002, 28 (04) :511-533
[14]  
Edelsbrunner H., 2010, Computational topology: an introduction
[15]   Barcodes: The persistent topology of data [J].
Ghrist, Robert .
BULLETIN OF THE AMERICAN MATHEMATICAL SOCIETY, 2008, 45 (01) :61-75
[16]  
Graf Florian, 2020, PMLR, P4314
[17]  
Hatcher A., 2002, Algebraic topology
[18]  
He RN, 2016, AAAI CONF ARTIF INTE, P144
[19]   LightGCN: Simplifying and Powering Graph Convolution Network for Recommendation [J].
He, Xiangnan ;
Deng, Kuan ;
Wang, Xiang ;
Li, Yan ;
Zhang, Yongdong ;
Wang, Meng .
PROCEEDINGS OF THE 43RD INTERNATIONAL ACM SIGIR CONFERENCE ON RESEARCH AND DEVELOPMENT IN INFORMATION RETRIEVAL (SIGIR '20), 2020, :639-648
[20]   Neural Collaborative Filtering [J].
He, Xiangnan ;
Liao, Lizi ;
Zhang, Hanwang ;
Nie, Liqiang ;
Hu, Xia ;
Chua, Tat-Seng .
PROCEEDINGS OF THE 26TH INTERNATIONAL CONFERENCE ON WORLD WIDE WEB (WWW'17), 2017, :173-182