论文标题

在异性邻居的存在下,在图神经网络公平性上

On Graph Neural Network Fairness in the Presence of Heterophilous Neighborhoods

论文作者

Loveland, Donald, Zhu, Jiong, Heimann, Mark, Fish, Ben, Schaub, Michael T., Koutra, Danai

论文摘要

我们研究图形神经网络(GNN)节点分类的任务,并在群体公平性之间建立联系,通过统计奇偶校验和机会均等,以及局部分类性,即连接节点具有相似属性的趋势。这种分类性通常是由同质性诱导的,即相似特性的节点的趋势。同质性在社交网络中可能很常见,在社交网络中,系统性因素迫使个人进入具有敏感属性的社区。通过综合图,我们研究了本地发生的同质和公平预测之间的相互作用,发现并非所有节点邻居在这方面都相等 - 社区以敏感属性的一类类别为主,通常难以获得公平的治疗,尤其是在不同的地方类别的情况下,并且同性恋敏感属性。在确定存在局部同质和公平之间的关系之后,我们研究了不公平的问题是否与应用的GNN模型的设计有关。我们表明,通过采用能够处理拆卸群体标签的异性GNN设计,与真实和合成数据集中的同质设计相比,可以将局部异性邻居中的群体公平提高25%。

We study the task of node classification for graph neural networks (GNNs) and establish a connection between group fairness, as measured by statistical parity and equal opportunity, and local assortativity, i.e., the tendency of linked nodes to have similar attributes. Such assortativity is often induced by homophily, the tendency for nodes of similar properties to connect. Homophily can be common in social networks where systemic factors have forced individuals into communities which share a sensitive attribute. Through synthetic graphs, we study the interplay between locally occurring homophily and fair predictions, finding that not all node neighborhoods are equal in this respect -- neighborhoods dominated by one category of a sensitive attribute often struggle to obtain fair treatment, especially in the case of diverging local class and sensitive attribute homophily. After determining that a relationship between local homophily and fairness exists, we investigate if the issue of unfairness can be associated to the design of the applied GNN model. We show that by adopting heterophilous GNN designs capable of handling disassortative group labels, group fairness in locally heterophilous neighborhoods can be improved by up to 25% over homophilous designs in real and synthetic datasets.

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