Training-free Heterogeneous Graph Condensation via Data Selection
Yuxuan Liang, Wentao Zhang, Xinyi Gao, Ling Yang, Chong Chen, Hongzhi, Yin, Yunhai Tong, Bin Cui

TL;DR
This paper introduces FreeHGC, a training-free method for condensing large heterogeneous graphs by data selection, enabling efficient and high-quality graph generation without model training.
Contribution
It proposes the first training-free heterogeneous graph condensation approach based on data selection, addressing efficiency and effectiveness limitations of prior methods.
Findings
Achieves efficient graph condensation without training.
Generates high-quality condensed heterogeneous graphs.
Outperforms existing methods in effectiveness and speed.
Abstract
Efficient training of large-scale heterogeneous graphs is of paramount importance in real-world applications. However, existing approaches typically explore simplified models to mitigate resource and time overhead, neglecting the crucial aspect of simplifying large-scale heterogeneous graphs from the data-centric perspective. Addressing this gap, HGCond introduces graph condensation (GC) in heterogeneous graphs and generates a small condensed graph for efficient model training. Despite its efficacy in graph generation, HGCond encounters two significant limitations. The first is low effectiveness, HGCond excessively relies on the simplest relay model for the condensation procedure, which restricts the ability to exert powerful Heterogeneous Graph Neural Networks (HGNNs) with flexible condensation ratio and limits the generalization ability. The second is low efficiency, HGCond follows…
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Taxonomy
TopicsAdvanced Graph Neural Networks
