基于不同专家组合的公平图表示学习

Zheyuan Liu, Chunhui Zhang, Yijun Tian, Erchi Zhang, Chao Huang, Yanfang Ye, Chuxu Zhang
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引用次数: 7

摘要

图神经网络(gnn)在图数据上表现出了良好的表征学习能力,并在各种下游应用中得到了应用。然而,基于web的应用程序中的真实数据(例如,推荐和广告)总是包含偏见,阻止gnn学习公平表示。虽然提出了许多解决公平性问题的作品,但它们在去偏后存在可学习知识不足、属性有限的显著问题。为了解决这个问题,我们开发了专家的图公平混合(G-Fame),这是一种新颖的即插即用方法,可以帮助任何gnn学习具有无偏属性的可区分表示。此外,在G-Fame的基础上,我们提出了G-Fame++,从节点表示、模型层和参数冗余的角度引入了三种新的策略来提高表示公平性。特别地,我们首先提出了嵌入多样化的方法来学习可区分的节点表示。其次,我们设计了层多样化策略,使不同模型层的输出差最大化。第三,引入专家多样化方法,最小化专家参数相似度,学习不同的互补表示。大量的实验表明,与跨多个图数据集的最先进方法相比,G-Fame和G-Fame++在准确性和公平性方面都具有优势。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Fair Graph Representation Learning via Diverse Mixture-of-Experts
Graph Neural Networks (GNNs) have demonstrated a great representation learning capability on graph data and have been utilized in various downstream applications. However, real-world data in web-based applications (e.g., recommendation and advertising) always contains bias, preventing GNNs from learning fair representations. Although many works were proposed to address the fairness issue, they suffer from the significant problem of insufficient learnable knowledge with limited attributes after debiasing. To address this problem, we develop Graph-Fairness Mixture of Experts (G-Fame), a novel plug-and-play method to assist any GNNs to learn distinguishable representations with unbiased attributes. Furthermore, based on G-Fame, we propose G-Fame++, which introduces three novel strategies to improve the representation fairness from node representations, model layer, and parameter redundancy perspectives. In particular, we first present the embedding diversified method to learn distinguishable node representations. Second, we design the layer diversified strategy to maximize the output difference of distinct model layers. Third, we introduce the expert diversified method to minimize expert parameter similarities to learn diverse and complementary representations. Extensive experiments demonstrate the superiority of G-Fame and G-Fame++ in both accuracy and fairness, compared to state-of-the-art methods across multiple graph datasets.
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