计算机科学
系统性风险
计量经济学
金融市场
分位数
衡平法
精算学
原始数据
资产(计算机安全)
资产配置
市场数据
分位数回归
财务风险
金融危机
大数据
压力测试
作者
Junyu Chen,Tom Boot,Lingwei Kong,Weining Wang
出处
期刊:Cornell University - arXiv
日期:2026-02-13
标识
DOI:10.48550/arxiv.2602.12490
摘要
Conditional Value-at-Risk (CoVaR) quantifies systemic financial risk by measuring the loss quantile of one asset, conditional on another asset experiencing distress. We develop a Transformer-based methodology that integrates financial news articles directly with market data to improve CoVaR estimates. Unlike approaches that use predefined sentiment scores, our method incorporates raw text embeddings generated by a large language model (LLM). We prove explicit error bounds for our Transformer CoVaR estimator, showing that accurate CoVaR learning is possible even with small datasets. Using U.S. market returns and Reuters news items from 2006--2013, our out-of-sample results show that textual information impacts the CoVaR forecasts. With better predictive performance, we identify a pronounced negative dip during market stress periods across several equity assets when comparing the Transformer-based CoVaR to both the CoVaR without text and the CoVaR using traditional sentiment measures. Our results show that textual data can be used to effectively model systemic risk without requiring prohibitively large data sets.
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