PyTorch Geometric Signed Directed: A Software Package on Graph Neural Networks for Signed and Directed Graphs
He, Yixuan, Zhang, Xitong, Huang, Junjie, Rozemberczki, Benedek, Cucuringu, Mihai, Reinert, Gesine
Networks are ubiquitous in many real-world applications (e.g., social networks encoding trust/distrust relationships, correlation networks arising from time series data). While many networks are signed or directed, or both, there is a lack of unified software packages on graph neural networks (GNNs) specially designed for signed and directed networks. In this paper, we present PyTorch Geometric Signed Directed (PyGSD), a software package which fills this gap. Along the way, we evaluate the implemented methods with experiments with a view to providing insights into which method to choose for a given task. The deep learning framework consists of easy-to-use GNN models, synthetic and real-world data, as well as task-specific evaluation metrics and loss functions for signed and directed networks. As an extension library for PyG, our proposed software is maintained with open-source releases, detailed documentation, continuous integration, unit tests and code coverage checks.
Nov-23-2023
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- North America > United States
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- Research Report
- Experimental Study (0.46)
- New Finding (0.46)
- Research Report
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