Redirecting to original paper in 30 seconds...
Click below to go immediately or wait for automatic redirect
📄 Abstract
Abstract: We introduce a novel high-frequency daily panel dataset of both markets and
news-based indicators -- including Geopolitical Risk, Economic Policy
Uncertainty, Trade Policy Uncertainty, and Political Sentiment -- for 42
countries across both emerging and developed markets. Using this dataset, we
study how sentiment dynamics shape sovereign risk, measured by Credit Default
Swap (CDS) spreads, and evaluate their forecasting value relative to
traditional drivers such as global monetary policy and market volatility. Our
horse-race analysis of forecasting models demonstrates that incorporating
news-based indicators significantly enhances predictive accuracy and enriches
the analysis, with non-linear machine learning methods -- particularly Random
Forests -- delivering the largest gains. Our analysis reveals that while global
financial variables remain the dominant drivers of sovereign risk, geopolitical
risk and economic policy uncertainty also play a meaningful role. Crucially,
their effects are amplified through non-linear interactions with global
financial conditions. Finally, we document pronounced regional heterogeneity,
as certain asset classes and emerging markets exhibit heightened sensitivity to
shocks in policy rates, global financial volatility, and geopolitical risk.
Key Contributions
JSON parse error: Unexpected token s in JSON at position 29506