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This collection of papers can be used to summarize research about graph reinforcement learning for the convenience of researchers.

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Published by IEEE Transactions on Emerging Topics in Computational Intelligence

This collection of papers can be used to summarize research about graph reinforcement learning for the convenience of researchers.

Mingshuo Nie,

Northeastern University, China.

Email: niemingshuo@stumail.neu.edu.cn

News

[18 November 2024] Our new work has been published in the IEEE Transactions on Computational Social Systems: AutoDAW: Automated Data Augmentation for Graphs With Weak Information

@article{nie2023autodaw,
  author={Nie, Mingshuo and Chen, Dongming and Wang, Dongqi and Chen, Huilin},
  journal={IEEE Transactions on Computational Social Systems}, 
  title={AutoDAW: Automated Data Augmentation for Graphs With Weak Information}, 
  year={2024},
  doi={10.1109/TCSS.2024.3487993}
}

Abstract

Graph mining tasks arise from many different application domains, including social networks, biological networks, transportation, and E-commerce, which have been receiving great attention from the theoretical and algorithmic design communities in recent years, and there has been some pioneering work employing the research-rich Reinforcement Learning (RL) techniques to address graph mining tasks. However, these fusion works are dispersed in different research domains, which makes them difficult to compare. In this survey, we provide a comprehensive overview of these fusion works and generalize these works to Graph Reinforcement Learning (GRL) as a unified formulation. We further discuss the applications of GRL methods across various domains, and simultaneously propose the key challenges and advantages of integrating graph mining and RL methods. Furthermore, we propose important directions and challenges to be solved in the future. To our knowledge, this is the latest work on a comprehensive survey of GRL, this work provides a global view and a learning resource for scholars. Based on our review, we create a collection of papers for both interested scholars who want to enter this rapidly developing domain and experts who would like to compare GRL methods.

Citation

If you find this work useful in your research, please consider citing:


@article{nie2023reinforcement,
  author={Nie, Mingshuo and Chen, Dongming and Wang, Dongqi},
  journal={IEEE Transactions on Emerging Topics in Computational Intelligence}, 
  title={Reinforcement Learning on Graphs: A Survey}, 
  year={2023},
  volume={7},
  number={4},
  pages={1065-1082},
  doi={10.1109/TETCI.2022.3222545}
}


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