Modeling Institutional Credit Risk with Financial News
Tam Tran-The

TL;DR
This paper introduces a neural network-based model that predicts credit downgrade risk using financial news data, outperforming traditional models and enhancing existing quantitative risk assessments.
Contribution
It presents a novel approach that leverages unstructured news data with neural embeddings to improve credit risk prediction accuracy.
Findings
Neural news-based model achieves over 80% AUC.
Adding news model output improves benchmark model performance by 5%.
News articles related to predicted downgrades are highly relevant and high-quality.
Abstract
Credit risk management, the practice of mitigating losses by understanding the adequacy of a borrower's capital and loan loss reserves, has long been imperative to any financial institution's long-term sustainability and growth. MassMutual is no exception. The company is keen on effectively monitoring downgrade risk, or the risk associated with the event when credit rating of a company deteriorates. Current work in downgrade risk modeling depends on multiple variations of quantitative measures provided by third-party rating agencies and risk management consultancy companies. As these structured numerical data become increasingly commoditized among institutional investors, there has been a wide push into using alternative sources of data, such as financial news, earnings call transcripts, or social media content, to possibly gain a competitive edge in the industry. The volume of…
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Taxonomy
TopicsFinancial Distress and Bankruptcy Prediction · Topic Modeling · Stock Market Forecasting Methods
