cs.AI updates on arXiv.org 10月14日 12:20
MFP框架提升图学习节点分类性能
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本文提出了一种多视角特征传播(MFP)框架,用于在特征稀疏的情况下提升图学习中的节点分类性能,同时保证隐私保护。通过将特征划分为多个高斯噪声视角,MFP在图拓扑中独立传播信息,最终生成具有表达性和鲁棒性的节点嵌入。实验结果表明,MFP在节点分类任务中优于现有方法,同时显著降低隐私泄露。

arXiv:2510.11347v1 Announce Type: cross Abstract: Graph Neural Networks (GNNs) have demonstrated remarkable success in node classification tasks over relational data, yet their effectiveness often depends on the availability of complete node features. In many real-world scenarios, however, feature matrices are highly sparse or contain sensitive information, leading to degraded performance and increased privacy risks. Furthermore, direct exposure of information can result in unintended data leakage, enabling adversaries to infer sensitive information. To address these challenges, we propose a novel Multi-view Feature Propagation (MFP) framework that enhances node classification under feature sparsity while promoting privacy preservation. MFP extends traditional Feature Propagation (FP) by dividing the available features into multiple Gaussian-noised views, each propagating information independently through the graph topology. The aggregated representations yield expressive and robust node embeddings. This framework is novel in two respects: it introduces a mechanism that improves robustness under extreme sparsity, and it provides a principled way to balance utility with privacy. Extensive experiments conducted on graph datasets demonstrate that MFP outperforms state-of-the-art baselines in node classification while substantially reducing privacy leakage. Moreover, our analysis demonstrates that propagated outputs serve as alternative imputations rather than reconstructions of the original features, preserving utility without compromising privacy. A comprehensive sensitivity analysis further confirms the stability and practical applicability of MFP across diverse scenarios. Overall, MFP provides an effective and privacy-aware framework for graph learning in domains characterized by missing or sensitive features.

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相关标签

图神经网络 节点分类 隐私保护 特征传播 多视角
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