GNN4Fintech
This is the repository for the collection of Graph Neural Network for Financial Technology.
Install / Use
/learn @jwwthu/GNN4FintechREADME
GNN4Fintech
This is the repository for the collection of Graph-based Deep Learning for Financial Applications.
If you find this repository helpful, you may consider cite our relevant work:
- Coming soon
Stock Market Prediction
2022
Journal
- Cheng D, Yang F, Xiang S, et al. <b>Financial time series forecasting with multi-modality graph neural network[J]</b>. Pattern Recognition, 2022, 121: 108218. Link
- Yin T, Liu C, Ding F, et al. <b>Graph-based stock correlation and prediction for high-frequency trading systems[J]</b>. Pattern Recognition, 2022, 122: 108209. Link
- Feng S, Xu C, Zuo Y, et al. <b>Relation-aware dynamic attributed graph attention network for stocks recommendation[J]</b>. Pattern Recognition, 2022, 121: 108119. Link
2021
Journal
- Chen W, Jiang M, Zhang W G, et al. <b>A novel graph convolutional feature based convolutional neural network for stock trend prediction[J]</b>. Information Sciences, 2021, 556: 67-94. Link
- Hsu Y L, Tsai Y C, Li C T. <b>FinGAT: Financial Graph Attention Networks for Recommending Top-K Profitable Stocks[J]</b>. IEEE Transactions on Knowledge and Data Engineering, 2021. Link Code
- Gao J, Ying X, Xu C, et al. <b>Graph-Based Stock Recommendation by Time-Aware Relational Attention Network[J]</b>. ACM Transactions on Knowledge Discovery from Data (TKDD), 2021, 16(1): 1-21. Link Code
- Xiong K, Ding X, Du L, et al. <b>Heterogeneous graph knowledge enhanced stock market prediction[J]</b>. AI Open, 2021, 2: 168-174. Link
- Hou X, Wang K, Zhong C, et al. <b>ST-Trader: A Spatial-Temporal Deep Neural Network for Modeling Stock Market Movement[J]</b>. IEEE/CAA Journal of Automatica Sinica, 2021, 8(5): 1015-1024. Link
Conference
- Wei T, You Y, Chen T. <b>AR-Stock: Deep Augmented Relational Stock Prediction[C]</b>. The AAAI21 Workshop on Knowledge Discovery from Unstructured Data in Financial Services 2021. Link
- Sawhney R, Agarwal S, Wadhwa A, et al. <b>Exploring the Scale-Free Nature of Stock Markets: Hyperbolic Graph Learning for Algorithmic Trading[C]</b>//Proceedings of the Web Conference 2021. 2021: 11-22. Link
- Zhao L, Li W, Bao R, et al. <b>Long-term, Short-term and Sudden Event: Trading Volume Movement Prediction with Graph-based Multi-view Modeling[C]</b>. IJCAI, 2021. Link Code
- Cheng R, Li Q. <b>Modeling the Momentum Spillover Effect for Stock Prediction via Attribute-Driven Graph Attention Networks[C]</b>. AAAI, 2021. Link Code
Preprint
- Chen Q, Robert C Y. <b>Graph-Based Learning for Stock Movement Prediction with Textual and Relational Data[J]</b>. arXiv preprint arXiv:2107.10941, 2021. Link
- Xu W, Liu W, Wang L, et al. <b>HIST: A Graph-based Framework for Stock Trend Forecasting via Mining Concept-Oriented Shared Information[J]</b>. arXiv preprint arXiv:2110.13716, 2021. Link Code
- Wu J, Xu K, Chen X, et al. <b>Price graphs: Utilizing the structural information of financial time series for stock prediction[J]</b>. arXiv preprint arXiv:2106.02522, 2021. Link Code
2020
Journal
- Long J, Chen Z, He W, et al. <b>An integrated framework of deep learning and knowledge graph for prediction of stock price trend: An application in Chinese stock exchange market[J]</b>. Applied Soft Computing, 2020, 91: 106205. Link
Conference
- Li H Y, Tseng V S, Philip S Y. <b>Enhancing Stock Trend Prediction Models by Mining Relational Graphs of Stock Prices[C]</b>//2020 International Conference on Pervasive Artificial Intelligence (ICPAI). IEEE, 2020: 110-117. Link
- Cheng D, Yang F, Wang X, et al. <b>Knowledge Graph-based Event Embedding Framework for Financial Quantitative Investments[C]</b>//Proceedings of the 43rd International ACM SIGIR Conference on Research and Development in Information Retrieval. 2020: 2221-2230. Link
- Li W, Bao R, Harimoto K, et al. <b>Modeling the stock relation with graph network for overnight stock movement prediction[C]</b>//Proceedings of the Twenty-Ninth International Joint Conference on Artificial Intelligence. Special Track on AI in FinTech. 2020: 4541-4547. Link Code
- Ye J, Zhao J, Ye K, et al. <b>Multi-Graph Convolutional Network for Relationship-Driven Stock Movement Prediction[C]</b>//2020 25th International Conference on Pattern Recognition (ICPR). IEEE, 2021: 6702-6709. Link Code
- Ying X, Xu C, Gao J, et al. <b>Time-aware Graph Relational Attention Network for Stock Recommendation[C]</b>//Proceedings of the 29th ACM International Conference on Information & Knowledge Management. 2020: 2281-2284. Link
Preprint
- Romain D D. <b>Predicting S&P500 Index direction with Transfer Learning and a Causal Graph as main Input[J]</b>. arXiv preprint arXiv:2011.13113, 2020. Link
2019
Journal
- Liu Y, Zeng Q, Ordieres Meré J, et al. <b>Anticipating stock market of the renowned companies: A knowledge graph approach[J]</b>. Complexity, 2019, 2019. Link
Conference
- Liu J, Lu Z, Du W. <b>Combining enterprise knowledge graph and news sentiment analysis for stock price prediction[C]</b>//Proceedings of the 52nd Hawaii International Conference on System Sciences. 2019. Link
Preprint
- Matsunaga D, Suzumura T, Takahashi T. <b>Exploring graph neural networks for stock market predictions with rolling window analysis[J]</b>. arXiv preprint arXiv:1909.10660, 2019. Link
- Kim R, So C H, Jeong M, et al. <b>Hats: A hierarchical graph attention network for stock movement prediction[J]</b>. arXiv preprint arXiv:1908.07999, 2019. Link Code
2018
Conference
- Chen Y, Wei Z, Huang X. <b>Incorporating corporation relationship via graph convolutional neural networks for stock price prediction[C]</b>//Proceedings of the 27th ACM International Conference on Information and Knowledge Management. 2018: 1655-1658. Link
2016
Conference
- Ding X, Zhang Y, Liu T, et al. <b>Knowledge-driven event embedding for stock prediction[C]</b>//Proceedings of coling 2016, the 26th international conference on computational linguistics: Technical papers. 2016: 2133-2142. Link
Anti-money Laundering
2020
Conference
- Alarab I, Prakoonwit S, Nacer M I. <b>Competence of graph convolutional networks for anti-money laundering in bitcoin blockchain[C]</b>//Proceedings of the 2020 5th International Conference on Machine Learning Technologies. 2020: 23-27. Link
2019
Preprint
- Weber M, Domeniconi G, Chen J, et al. <b>Anti-money laundering in bitcoin: Experimenting with graph convolutional networks for financial forensics[J]</b>. arXiv preprint arXiv:1908.02591, 2019. Link
- Hu Y, Seneviratne S, Thilakarathna K, et al. <b>Characterizing and detecting money laundering activities on the bitcoin network[J]</b>. arXiv preprint arXiv:1912.12060, 2019. Link
Credit Scoring
2020
Conference
- Sukharev I, Shumovskaia V, Fedyanin K, et al. <b>EWS-GCN: Edge Weight-Shared Graph Convolutional Network for Transactional Banking Data[C]</b>//2020 IEEE International Conference on Data Mining (ICDM). IEEE, 2020: 1268-1273. Link
Default Prediction
2021
Journal
- Chi M, Hongyan S, Shaofan W, et al. <b>Bond Default Prediction Based on Deep Learning and Knowledge Graph Technology[J]</b>. IEEE Access, 2021, 9: 12750-12761. Link
- Lee J W, Lee W K, Sohn S Y. <b>Graph convolutional network-based credit default prediction utilizing three types of virtual distances among borrowers[J]</b>. Expert Systems with Applications, 2021, 168: 114411. Link
Financial Event Prediction
2020
Journal
- Su Z, Jiang J. <b>Hierarchical gated recurrent unit with semantic attention for event prediction[J]</b>. Future Internet, 2020, 12(2): 39. Link Code and Data
2019
Confere
Related Skills
node-connect
349.9kDiagnose OpenClaw node connection and pairing failures for Android, iOS, and macOS companion apps
frontend-design
109.8kCreate distinctive, production-grade frontend interfaces with high design quality. Use this skill when the user asks to build web components, pages, or applications. Generates creative, polished code that avoids generic AI aesthetics.
openai-whisper-api
349.9kTranscribe audio via OpenAI Audio Transcriptions API (Whisper).
qqbot-media
349.9kQQBot 富媒体收发能力。使用 <qqmedia> 标签,系统根据文件扩展名自动识别类型(图片/语音/视频/文件)。
Security Score
Audited on Nov 24, 2025
