jackieD14/Graph-models-in-finance-application
Paper collection for graph based models in finance application
This is a collection of research papers focused on using advanced network analysis techniques to solve complex problems in finance and e-commerce. It brings together academic work that applies graph-based models to predict stock movements, assess loan default risk, enhance e-commerce recommendation systems, and detect various types of fraud. Financial analysts, risk managers, e-commerce strategists, and fraud prevention specialists can use this resource to understand the latest research.
113 stars. No commits in the last 6 months.
Use this if you are a financial professional or e-commerce specialist looking for academic research on applying graph-based models to predict market trends, manage credit risk, improve recommendations, or detect fraud.
Not ideal if you are looking for ready-to-use software tools or practical implementation guides, as this is primarily a collection of research papers.
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Apr 27, 2021
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