DeXposure-FM: A Time-series, Graph Foundation Model for Credit Exposures and Stability on Decentralized Financial Networks
Aijie Shu, Wenbin Wu, Gbenga Ibikunle, Fengxiang He

TL;DR
DeXposure-FM is a novel time-series graph foundation model designed to measure and forecast credit exposures in DeFi networks, enhancing risk assessment and stability analysis in decentralized finance ecosystems.
Contribution
It introduces the first time-series, graph foundation model for DeFi credit exposure forecasting, leveraging a large dataset and outperforming existing models in accuracy and utility.
Findings
Outperforms state-of-the-art models in credit exposure prediction
Enables macroprudential monitoring and stress testing tools
Supports protocol-level systemic importance and spillover analysis
Abstract
Credit exposure in Decentralized Finance (DeFi) is often implicit and token-mediated, creating a dense web of inter-protocol dependencies. Thus, a shock to one token may result in significant and uncontrolled contagion effects. As the DeFi ecosystem becomes increasingly linked with traditional financial infrastructure through instruments, such as stablecoins, the risk posed by this dynamic demands more powerful quantification tools. We introduce DeXposure-FM, the first time-series, graph foundation model for measuring and forecasting inter-protocol credit exposure on DeFi networks, to the best of our knowledge. Employing a graph-tabular encoder, with pre-trained weight initialization, and multiple task-specific heads, DeXposure-FM is trained on the DeXposure dataset that has 43.7 million data entries, across 4,300+ protocols on 602 blockchains, covering 24,300+ unique tokens. The…
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Taxonomy
TopicsBanking stability, regulation, efficiency · FinTech, Crowdfunding, Digital Finance · Financial Distress and Bankruptcy Prediction
