Robust Econometrics for Growth-at-Risk
Robust Econometrics for Growth-at-Risk
The Growth-at-Risk (GaR) framework has garnered attention in recent econometric literature, yet current approaches implicitly assume a constant Pareto exponent. We introduce novel and robust econometrics to estimate the tails of GaR based on a rigorous theoretical framework and establish validity and effectiveness. Simulations demonstrate consistent outperformance relative to existing alternatives in terms of predictive accuracy. We perform a long-term GaR analysis that provides accurate and insightful predictions, effectively capturing financial anomalies better than current methods.
Tobias Adrian、Yuya Sasaki、Yulong Wang
经济学财政、金融
Tobias Adrian,Yuya Sasaki,Yulong Wang.Robust Econometrics for Growth-at-Risk[EB/OL].(2025-08-01)[2025-08-11].https://arxiv.org/abs/2508.00263.点此复制
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