Saved in:
Bibliographic Details
Main Authors: Feng, ZhengZhao, Wang, Rui, Wang, TianXing, Song, Mingli, Wu, Sai, He, Shuibing
Format: Preprint
Published: 2024
Subjects:
Online Access:https://arxiv.org/abs/2405.00476
Tags: Add Tag
No Tags, Be the first to tag this record!
_version_ 1866916230561005568
author Feng, ZhengZhao
Wang, Rui
Wang, TianXing
Song, Mingli
Wu, Sai
He, Shuibing
author_facet Feng, ZhengZhao
Wang, Rui
Wang, TianXing
Song, Mingli
Wu, Sai
He, Shuibing
contents Dynamic Graph Neural Networks (GNNs) combine temporal information with GNNs to capture structural, temporal, and contextual relationships in dynamic graphs simultaneously, leading to enhanced performance in various applications. As the demand for dynamic GNNs continues to grow, numerous models and frameworks have emerged to cater to different application needs. There is a pressing need for a comprehensive survey that evaluates the performance, strengths, and limitations of various approaches in this domain. This paper aims to fill this gap by offering a thorough comparative analysis and experimental evaluation of dynamic GNNs. It covers 81 dynamic GNN models with a novel taxonomy, 12 dynamic GNN training frameworks, and commonly used benchmarks. We also conduct experimental results from testing representative nine dynamic GNN models and three frameworks on six standard graph datasets. Evaluation metrics focus on convergence accuracy, training efficiency, and GPU memory usage, enabling a thorough comparison of performance across various models and frameworks. From the analysis and evaluation results, we identify key challenges and offer principles for future research to enhance the design of models and frameworks in the dynamic GNNs field.
format Preprint
id arxiv_https___arxiv_org_abs_2405_00476
institution arXiv
publishDate 2024
record_format arxiv
spellingShingle A Comprehensive Survey of Dynamic Graph Neural Networks: Models, Frameworks, Benchmarks, Experiments and Challenges
Feng, ZhengZhao
Wang, Rui
Wang, TianXing
Song, Mingli
Wu, Sai
He, Shuibing
Machine Learning
Dynamic Graph Neural Networks (GNNs) combine temporal information with GNNs to capture structural, temporal, and contextual relationships in dynamic graphs simultaneously, leading to enhanced performance in various applications. As the demand for dynamic GNNs continues to grow, numerous models and frameworks have emerged to cater to different application needs. There is a pressing need for a comprehensive survey that evaluates the performance, strengths, and limitations of various approaches in this domain. This paper aims to fill this gap by offering a thorough comparative analysis and experimental evaluation of dynamic GNNs. It covers 81 dynamic GNN models with a novel taxonomy, 12 dynamic GNN training frameworks, and commonly used benchmarks. We also conduct experimental results from testing representative nine dynamic GNN models and three frameworks on six standard graph datasets. Evaluation metrics focus on convergence accuracy, training efficiency, and GPU memory usage, enabling a thorough comparison of performance across various models and frameworks. From the analysis and evaluation results, we identify key challenges and offer principles for future research to enhance the design of models and frameworks in the dynamic GNNs field.
title A Comprehensive Survey of Dynamic Graph Neural Networks: Models, Frameworks, Benchmarks, Experiments and Challenges
topic Machine Learning
url https://arxiv.org/abs/2405.00476