Robust Graph Neural Networks for Stability Analysis in Dynamic Networks
- URL: http://arxiv.org/abs/2411.11848v1
- Date: Tue, 29 Oct 2024 06:11:36 GMT
- Title: Robust Graph Neural Networks for Stability Analysis in Dynamic Networks
- Authors: Xin Zhang, Zhen Xu, Yue Liu, Mengfang Sun, Tong Zhou, Wenying Sun,
- Abstract summary: This paper explores the economic risk identification algorithm based on the graph neural network (GNN) algorithm.
It aims to provide financial institutions and regulators with more intelligent technical tools to help maintain the security and stability of the financial market.
- Score: 16.077138803931295
- License:
- Abstract: In the current context of accelerated globalization and digitalization, the complexity and uncertainty of financial markets are increasing, and the identification and prevention of economic risks have become a key link in maintaining the stability of the financial system. Traditional risk identification methods often have limitations because they are difficult to cope with the multi-level and dynamically changing complex relationships in financial networks. With the rapid development of financial technology, graph neural network (GNN) technology, as an emerging deep learning method, has gradually shown great potential in the field of financial risk management. GNN can map transaction behaviors, financial institutions, individuals, and their interactive relationships in financial networks into graph structures, and effectively capture potential patterns and abnormal signals in financial data through embedded representation learning. Using this technology, financial institutions can extract valuable information from complex transaction networks, identify hidden dangers or abnormal behaviors that may cause systemic risks in a timely manner, optimize decision-making processes, and improve the accuracy of risk warnings. This paper explores the economic risk identification algorithm based on the GNN algorithm, aiming to provide financial institutions and regulators with more intelligent technical tools to help maintain the security and stability of the financial market. Improving the efficiency of economic risk identification through innovative technical means is expected to further enhance the risk resistance of the financial system and lay the foundation for building a robust global financial system.
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