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引用次数: 0
摘要
图可以帮助对基因网络和电网等各种复杂系统进行建模,并分析其中的内在关系。最近,对图的学习引起了越来越多的关注,特别是基于图神经网络(GNN)的解决方案,其中图注意力网络(GAT)已成为基于图的任务中使用最广泛的神经网络结构之一。虽然有研究表明,在学习中使用图结构会导致算法偏差的放大,但 GATs 中的注意力设计对算法偏差的影响尚未得到研究。受此启发,本研究首先进行了理论分析,以证明基于 GAT 的节点分类学习中算法偏差的来源。然后,在理论分析的基础上,开发了一种利用公平感知注意力设计的新型算法 FairGAT。在真实世界网络上的实验结果表明,FairGAT 提高了群体公平性度量,同时在节点分类和链接预测方面提供了与公平感知基线相当的效用。
Graphs can facilitate modeling various complex systems such as gene networks and power grids, as well as analyzing the underlying relations within them. Learning over graphs has recently attracted increasing attention, particularly graph neural network-based (GNN) solutions, among which graph attention networks (GATs) have become one of the most widely utilized neural network structures for graph-based tasks. Although it is shown that the use of graph structures in learning results in the amplification of algorithmic bias, the influence of the attention design in GATs on algorithmic bias has not been investigated. Motivated by this, the present study first carries out a theoretical analysis in order to demonstrate the sources of algorithmic bias in GAT-based learning for node classification. Then, a novel algorithm, FairGAT, that leverages a fairness-aware attention design is developed based on the theoretical findings. Experimental results on real-world networks demonstrate that FairGAT improves group fairness measures while also providing comparable utility to the fairness-aware baselines for node classification and link prediction.
期刊介绍:
TKDD welcomes papers on a full range of research in the knowledge discovery and analysis of diverse forms of data. Such subjects include, but are not limited to: scalable and effective algorithms for data mining and big data analysis, mining brain networks, mining data streams, mining multi-media data, mining high-dimensional data, mining text, Web, and semi-structured data, mining spatial and temporal data, data mining for community generation, social network analysis, and graph structured data, security and privacy issues in data mining, visual, interactive and online data mining, pre-processing and post-processing for data mining, robust and scalable statistical methods, data mining languages, foundations of data mining, KDD framework and process, and novel applications and infrastructures exploiting data mining technology including massively parallel processing and cloud computing platforms. TKDD encourages papers that explore the above subjects in the context of large distributed networks of computers, parallel or multiprocessing computers, or new data devices. TKDD also encourages papers that describe emerging data mining applications that cannot be satisfied by the current data mining technology.