Domain Adaptation on Graphs by Learning Aligned Graph Bases
Mehmet Pilanci, Elif Vural

TL;DR
This paper introduces a novel domain adaptation method for graph-based semi-supervised learning, aligning spectral representations of source and target graphs to improve classification accuracy across diverse data domains.
Contribution
It proposes a new approach that learns a transformation between graph Fourier bases to transfer spectral information for better label prediction on target graphs.
Findings
Outperforms recent domain adaptation methods in various datasets
Effectively aligns spectral bases between source and target graphs
Improves classification accuracy with fewer labeled nodes
Abstract
A common assumption in semi-supervised learning with graph models is that the class label function varies smoothly on the data graph, resulting in the rather strict prior that the label function has low-frequency content. Meanwhile, in many classification problems, the label function may vary abruptly in certain graph regions, resulting in high-frequency components. Although the semi-supervised estimation of class labels is an ill-posed problem in general, in several applications it is possible to find a source graph on which the label function has similar frequency content to that on the target graph where the actual classification problem is defined. In this paper, we propose a method for domain adaptation on graphs motivated by these observations. Our algorithm is based on learning the spectrum of the label function in a source graph with many labeled nodes, and transferring the…
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