公平稳定图表示学习的多视图置信度校准框架

Xu Zhang, Liang Zhang, Bo Jin, Xinjiang Lu
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引用次数: 3

摘要

图神经网络(gnn)容易受到对抗性攻击和歧视性偏见。前沿研究通常采用摄动不变一致性正则化策略,而不考虑预测固有的不确定性,这可能导致在意图图拓扑或节点特征攻击下预测不正确而产生不满意的过置信度。此外,在完全图结构上的操作偏向于全局水平图噪声,带来了严重的计算问题。在这项工作中,我们开发了一个多视图置信度校准框架,称为mcnifty,用于统一公平和稳定的图表示学习。其核心是基于证据理论的多视图不确定性感知节点嵌入学习模块,包括视图内证据校准、视图间证据融合和GNN架构中的不确定性感知消息传递过程,同时在子图层面对反事实公平性和稳定性进行优化。在三个真实数据集上的实验结果表明,我们的方法能够充分捕获固有的不确定性,同时通过子图诱导的多视图置信度校准提高了公平性和稳定性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A Multi-view Confidence-calibrated Framework for Fair and Stable Graph Representation Learning
Graph Neural Networks (GNNs) are prone to adversarial attacks and discriminatory biases. The cutting-edge studies usually adopt a perturbation-invariant consistency regularization strategy without considering the inherent prediction uncertainties, which can lead to unsatisfactory overconfidence for incorrect prediction under intent graph topology or node features attacks. Besides, operating on the complete graph structure is biased towards global level graph noise and brings severe computational issues. In this work, we develop a multi-view confidence-calibrated framework, called MCCNIFTY, for unified fair and stable graph representation learning. At its core is a multi-view uncertainty-aware node embedding learning module derived from evidential theory, including an intra-view evidence calibration, an inter-view evidence fusion, and an uncertainty-aware message passing process in a GNN architecture, which simultaneously optimizes for counterfactual fairness and stability at the sub-graph level. Experimental results on three real-world datasets demonstrate that our method is capable of adequately capturing inherent uncertainties while improving the fairness and stability via subgraph-induced multiview confidence calibration.
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