GC-Bench: An Open and Unified Benchmark for Graph Condensation
- URL: http://arxiv.org/abs/2407.00615v2
- Date: Thu, 21 Nov 2024 19:57:09 GMT
- Title: GC-Bench: An Open and Unified Benchmark for Graph Condensation
- Authors: Qingyun Sun, Ziying Chen, Beining Yang, Cheng Ji, Xingcheng Fu, Sheng Zhou, Hao Peng, Jianxin Li, Philip S. Yu,
- Abstract summary: We develop a comprehensive Graph Condensation Benchmark (GC-Bench) to analyze the performance of graph condensation.
GC-Bench systematically investigates the characteristics of graph condensation in terms of the following dimensions: effectiveness, transferability, and complexity.
We have developed an easy-to-use library for training and evaluating different GC methods to facilitate reproducible research.
- Score: 54.70801435138878
- License:
- Abstract: Graph condensation (GC) has recently garnered considerable attention due to its ability to reduce large-scale graph datasets while preserving their essential properties. The core concept of GC is to create a smaller, more manageable graph that retains the characteristics of the original graph. Despite the proliferation of graph condensation methods developed in recent years, there is no comprehensive evaluation and in-depth analysis, which creates a great obstacle to understanding the progress in this field. To fill this gap, we develop a comprehensive Graph Condensation Benchmark (GC-Bench) to analyze the performance of graph condensation in different scenarios systematically. Specifically, GC-Bench systematically investigates the characteristics of graph condensation in terms of the following dimensions: effectiveness, transferability, and complexity. We comprehensively evaluate 12 state-of-the-art graph condensation algorithms in node-level and graph-level tasks and analyze their performance in 12 diverse graph datasets. Further, we have developed an easy-to-use library for training and evaluating different GC methods to facilitate reproducible research. The GC-Bench library is available at https://github.com/RingBDStack/GC-Bench.
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