IGB: Addressing The Gaps In Labeling, Features, Heterogeneity, and Size of Public Graph Datasets for Deep Learning Research
Arpandeep Khatua, Vikram Sharma Mailthody, Bhagyashree Taleka, and Tengfei Ma, Xiang Song, Wen-mei Hwu

TL;DR
The Illinois Graph Benchmark (IGB) is a large, flexible, open-source dataset collection designed to advance GNN research by providing extensive labeled data and supporting diverse experimental setups.
Contribution
We introduce IGB, a large-scale, flexible academic graph dataset collection that significantly increases labeled data for GNN training and evaluation.
Findings
IGB provides over 162 times more labeled data than existing datasets.
Supports multiple GNN architectures and embedding techniques.
Enables systematic analysis of GNN performance and generalization.
Abstract
Graph neural networks (GNNs) have shown high potential for a variety of real-world, challenging applications, but one of the major obstacles in GNN research is the lack of large-scale flexible datasets. Most existing public datasets for GNNs are relatively small, which limits the ability of GNNs to generalize to unseen data. The few existing large-scale graph datasets provide very limited labeled data. This makes it difficult to determine if the GNN model's low accuracy for unseen data is inherently due to insufficient training data or if the model failed to generalize. Additionally, datasets used to train GNNs need to offer flexibility to enable a thorough study of the impact of various factors while training GNN models. In this work, we introduce the Illinois Graph Benchmark (IGB), a research dataset tool that the developers can use to train, scrutinize and systematically evaluate…
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Taxonomy
TopicsAdvanced Graph Neural Networks · Graph Theory and Algorithms · Data Quality and Management
