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Main Authors: Qin, Jiawen, Yuan, Haonan, Sun, Qingyun, Xu, Lyujin, Yuan, Jiaqi, Huang, Pengfeng, Wang, Zhaonan, Fu, Xingcheng, Peng, Hao, Li, Jianxin, Yu, Philip S.
Format: Preprint
Published: 2024
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Online Access:https://arxiv.org/abs/2406.09870
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author Qin, Jiawen
Yuan, Haonan
Sun, Qingyun
Xu, Lyujin
Yuan, Jiaqi
Huang, Pengfeng
Wang, Zhaonan
Fu, Xingcheng
Peng, Hao
Li, Jianxin
Yu, Philip S.
author_facet Qin, Jiawen
Yuan, Haonan
Sun, Qingyun
Xu, Lyujin
Yuan, Jiaqi
Huang, Pengfeng
Wang, Zhaonan
Fu, Xingcheng
Peng, Hao
Li, Jianxin
Yu, Philip S.
contents Deep graph learning has gained grand popularity over the past years due to its versatility and success in representing graph data across a wide range of domains. However, the pervasive issue of imbalanced graph data distributions, where certain parts exhibit disproportionally abundant data while others remain sparse, undermines the efficacy of conventional graph learning algorithms, leading to biased outcomes. To address this challenge, Imbalanced Graph Learning (IGL) has garnered substantial attention, enabling more balanced data distributions and better task performance. Despite the proliferation of IGL algorithms, the absence of consistent experimental protocols and fair performance comparisons pose a significant barrier to comprehending advancements in this field. To bridge this gap, we introduce IGL-Bench, a foundational comprehensive benchmark for imbalanced graph learning, embarking on 16 diverse graph datasets and 24 distinct IGL algorithms with uniform data processing and splitting strategies. Specifically, IGL-Bench systematically investigates state-of-the-art IGL algorithms in terms of effectiveness, robustness, and efficiency on node-level and graph-level tasks, with the scope of class-imbalance and topology-imbalance. Extensive experiments demonstrate the potential benefits of IGL algorithms on various imbalanced conditions, offering insights and opportunities in the IGL field. Further, we have developed an open-sourced and unified package to facilitate reproducible evaluation and inspire further innovative research, which is available at https://github.com/RingBDStack/IGL-Bench.
format Preprint
id arxiv_https___arxiv_org_abs_2406_09870
institution arXiv
publishDate 2024
record_format arxiv
spellingShingle IGL-Bench: Establishing the Comprehensive Benchmark for Imbalanced Graph Learning
Qin, Jiawen
Yuan, Haonan
Sun, Qingyun
Xu, Lyujin
Yuan, Jiaqi
Huang, Pengfeng
Wang, Zhaonan
Fu, Xingcheng
Peng, Hao
Li, Jianxin
Yu, Philip S.
Machine Learning
Artificial Intelligence
Deep graph learning has gained grand popularity over the past years due to its versatility and success in representing graph data across a wide range of domains. However, the pervasive issue of imbalanced graph data distributions, where certain parts exhibit disproportionally abundant data while others remain sparse, undermines the efficacy of conventional graph learning algorithms, leading to biased outcomes. To address this challenge, Imbalanced Graph Learning (IGL) has garnered substantial attention, enabling more balanced data distributions and better task performance. Despite the proliferation of IGL algorithms, the absence of consistent experimental protocols and fair performance comparisons pose a significant barrier to comprehending advancements in this field. To bridge this gap, we introduce IGL-Bench, a foundational comprehensive benchmark for imbalanced graph learning, embarking on 16 diverse graph datasets and 24 distinct IGL algorithms with uniform data processing and splitting strategies. Specifically, IGL-Bench systematically investigates state-of-the-art IGL algorithms in terms of effectiveness, robustness, and efficiency on node-level and graph-level tasks, with the scope of class-imbalance and topology-imbalance. Extensive experiments demonstrate the potential benefits of IGL algorithms on various imbalanced conditions, offering insights and opportunities in the IGL field. Further, we have developed an open-sourced and unified package to facilitate reproducible evaluation and inspire further innovative research, which is available at https://github.com/RingBDStack/IGL-Bench.
title IGL-Bench: Establishing the Comprehensive Benchmark for Imbalanced Graph Learning
topic Machine Learning
Artificial Intelligence
url https://arxiv.org/abs/2406.09870