Leveraging Graph Convolutional Networks for Semi-supervised Learning in Multi-view Non-graph Data

被引:0
作者
Dornaika, F. [1 ,2 ]
Bi, J. [1 ]
Charafeddine, J. [3 ]
机构
[1] Univ Basque Country, UPV EHU, San Sebastian, Spain
[2] Basque Fdn Sci, Ikerbasque, Bilbao, Spain
[3] De Vinci Res Ctr, De Vinci Higher Educ, Paris, France
关键词
Multi-view data; Semi-supervised learning; Graph estimation; Consensus graph; Graph convolutional networks; FUSION;
D O I
10.1007/s12559-025-10428-y
中图分类号
TP18 [人工智能理论];
学科分类号
081104 ; 0812 ; 0835 ; 1405 ;
摘要
Semi-supervised learning with a graph-based approach has gained prominence in machine learning, particularly in scenarios where labeling data involves substantial costs. Graph convolution networks (GCNs) have found widespread application in semi-supervised learning, predominantly on graph-structured data such as citation and social networks. However, a noticeable gap exists in the application of these methods to non-graph multi-view data, such as collections of images. In an effort to address this gap, we introduce two innovative deep semi-supervised multi-view classification models specifically tailored for non-graph data. Both models share a common architecture, leveraging GCNs and integrating a label smoothing constraint. The primary distinction lies in the construction of the consensus similarity graph. The first model directly reconstructs the consensus graph from different views using a specialized objective function designed for flexible graph-based semi-supervised classification. In contrast, the second model independently reconstructs individual graphs and subsequently adaptively merges them into a unified consensus graph. Our experiments encompass various multiple-view image datasets. The results consistently demonstrate the superior performance of our proposed approach compared to traditional fusion methods with GCNs. In this research, we present two approaches for tackling semi-supervised classification challenges involving multiple views. One method is named Semi-supervised Classification with a Unified Graph (SCUG), and the other is referred to as Semi-supervised Classification with a Fused Graph (SC-Fused). Both methods share a common semi-supervised classification process, utilizing the GCN framework and incorporating label smoothing. However, the key distinction lies in the construction of the similarity graph. Unlike traditional ad hoc graph construction approaches, our proposed methods, SCUG and SC-Fused, estimate the unified graph or individual graphs, respectively, alongside the labels. This results in more optimized graphs that benefit from data smoothing and the semi-supervised context.
引用
收藏
页数:15
相关论文
共 49 条
[1]  
[Anonymous], 2010, NIPS 2010
[2]  
Atwood J, 2016, ADV NEUR IN, V29
[3]   Joint auto-weighted graph fusion and scalable semi-supervised learning [J].
Bahrami, Saeedeh ;
Dornaika, Fadi ;
Bosaghzadeh, Alireza .
INFORMATION FUSION, 2021, 66 :213-228
[4]  
Blum A., 1998, Proceedings of the Eleventh Annual Conference on Computational Learning Theory, P92, DOI 10.1145/279943.279962
[5]  
Bruna J, 2014, Arxiv, DOI arXiv:1312.6203
[6]   Consensus and complementarity based maximum entropy discrimination for multi-view classification [J].
Chao, Guoqing ;
Sun, Shiliang .
INFORMATION SCIENCES, 2016, 367 :296-310
[7]   Alternative Multiview Maximum Entropy Discrimination [J].
Chao, Guoqing ;
Sun, Shiliang .
IEEE TRANSACTIONS ON NEURAL NETWORKS AND LEARNING SYSTEMS, 2016, 27 (07) :1445-1456
[8]   Learnable graph convolutional network and feature fusion for multi-view learning [J].
Chen, Zhaoliang ;
Fu, Lele ;
Yao, Jie ;
Guo, Wenzhong ;
Plant, Claudia ;
Wang, Shiping .
INFORMATION FUSION, 2023, 95 :109-119
[9]  
Defferrard M, 2016, ADV NEUR IN, V29
[10]   A unified deep semi-supervised graph learning scheme based on nodes re-weighting and manifold regularization [J].
Dornaika, Fadi ;
Bi, Jingjun ;
Zhang, Chongsheng .
NEURAL NETWORKS, 2023, 158 :188-196