Macroeconomic Forecasting for the G7 countries under Uncertainty Shocks
- URL: http://arxiv.org/abs/2510.23347v1
- Date: Mon, 27 Oct 2025 14:01:41 GMT
- Title: Macroeconomic Forecasting for the G7 countries under Uncertainty Shocks
- Authors: Shovon Sengupta, Sunny Kumar Singh, Tanujit Chakraborty,
- Abstract summary: We extend the Sims Zha Bayesian VAR with variables to incorporate domain-informed shrinkage and four newspaper based uncertainty shocks.<n>The framework improves structural interpretability, mitigates dimensionality, and imposes empirically guided regularization.
- Score: 0.0
- License: http://creativecommons.org/licenses/by/4.0/
- Abstract: Accurate macroeconomic forecasting has become harder amid geopolitical disruptions, policy reversals, and volatile financial markets. Conventional vector autoregressions (VARs) overfit in high dimensional settings, while threshold VARs struggle with time varying interdependencies and complex parameter structures. We address these limitations by extending the Sims Zha Bayesian VAR with exogenous variables (SZBVARx) to incorporate domain-informed shrinkage and four newspaper based uncertainty shocks such as economic policy uncertainty, geopolitical risk, US equity market volatility, and US monetary policy uncertainty. The framework improves structural interpretability, mitigates dimensionality, and imposes empirically guided regularization. Using G7 data, we study spillovers from uncertainty shocks to five core variables (unemployment, real broad effective exchange rates, short term rates, oil prices, and CPI inflation), combining wavelet coherence (time frequency dynamics) with nonlinear local projections (state dependent impulse responses). Out-of-sample results at 12 and 24 month horizons show that SZBVARx outperforms 14 benchmarks, including classical VARs and leading machine learning models, as confirmed by Murphy difference diagrams, multivariate Diebold Mariano tests, and Giacomini White predictability tests. Credible Bayesian prediction intervals deliver robust uncertainty quantification for scenario analysis and risk management. The proposed SZBVARx offers G7 policymakers a transparent, well calibrated tool for modern macroeconomic forecasting under pervasive uncertainty.
Related papers
- Bayesian Robust Financial Trading with Adversarial Synthetic Market Data [15.993346478707686]
Algorithmic trading relies on machine learning models to make trading decisions.<n>Despite strong in-sample performance, these models often degrade when confronted with evolving real-world market regimes.<n>We propose a Bayesian Robust Framework that integrates a macro-conditioned generative model with robust policy learning.
arXiv Detail & Related papers (2026-01-14T13:15:46Z) - Bridging the Gap Between Bayesian Deep Learning and Ensemble Weather Forecasts [100.26854618129039]
Weather forecasting is fundamentally challenged by the chaotic nature of the atmosphere.<n>Recent advances in Bayesian Deep Learning (BDL) offer a promising but often disconnected alternative.<n>We bridge these paradigms through a unified hybrid BDL framework for ensemble weather forecasting.
arXiv Detail & Related papers (2025-11-18T07:49:52Z) - Robust Reinforcement Learning in Finance: Modeling Market Impact with Elliptic Uncertainty Sets [57.179679246370114]
In financial applications, reinforcement learning (RL) agents are commonly trained on historical data, where their actions do not influence prices.<n>During deployment, these agents trade in live markets where their own transactions can shift asset prices, a phenomenon known as market impact.<n>Traditional robust RL approaches address this model misspecification by optimizing the worst-case performance over a set of uncertainties.<n>We develop a novel class of elliptic uncertainty sets, enabling efficient and tractable robust policy evaluation.
arXiv Detail & Related papers (2025-10-22T18:22:25Z) - Geopolitics, Geoeconomics and Risk:A Machine Learning Approach [0.21485350418225244]
Using this dataset, we study how sentiment dynamics shape sovereign risk.<n>Global financial variables remain the dominant drivers of sovereign risk.<n>However, geopolitical risk and economic policy uncertainty also play a meaningful role.
arXiv Detail & Related papers (2025-10-14T11:51:36Z) - Neural ARFIMA model for forecasting BRIC exchange rates with long memory under oil shocks and policy uncertainties [0.0]
Key drivers of exchange rate dynamics include global economic policy uncertainty, US equity market volatility, US monetary policy uncertainty, oil price growth rates, and country-specific short-term interest rate differentials.<n>We propose a Neural AutoRegressive Fractionally Integrated Moving Average model that combines the long-memory representation of ARFIMA with the nonlinear learning capacity of neural networks.<n>We show that NARFIMA consistently outperforms various state-of-the-art statistical and machine learning models in forecasting BRIC exchange rates.
arXiv Detail & Related papers (2025-09-08T13:49:48Z) - Interpreting Fedspeak with Confidence: A LLM-Based Uncertainty-Aware Framework Guided by Monetary Policy Transmission Paths [30.982590730616746]
"Fedspeak", the stylized and often nuanced language used by the U.S. Federal Reserve, encodes implicit policy signals and strategic stances.<n>We propose an uncertainty-aware framework for parsing and interpreting Fedspeak.
arXiv Detail & Related papers (2025-08-11T14:04:59Z) - Can We Reliably Predict the Fed's Next Move? A Multi-Modal Approach to U.S. Monetary Policy Forecasting [2.6396287656676733]
This study examines whether predictive accuracy can be enhanced by integrating structured data with unstructured textual signals from Federal Reserve communications.<n>Our results show that hybrid models consistently outperform unimodal baselines.<n>For monetary policy forecasting, simpler hybrid models can offer both accuracy and interpretability, delivering actionable insights for researchers and decision-makers.
arXiv Detail & Related papers (2025-06-28T05:54:58Z) - Time-varying Factor Augmented Vector Autoregression with Grouped Sparse Autoencoder [4.769637827387851]
We introduce a Grouped Sparse autoencoder that employs the Spike-and-Slab Lasso prior.<n>We incorporate time-varying parameters into the VAR component to better capture evolving economic dynamics.<n>Our empirical application to the US economy demonstrates that the Grouped Sparse autoencoder produces more interpretable factors.
arXiv Detail & Related papers (2025-03-06T12:37:55Z) - Model-Based Epistemic Variance of Values for Risk-Aware Policy Optimization [59.758009422067]
We consider the problem of quantifying uncertainty over expected cumulative rewards in model-based reinforcement learning.
We propose a new uncertainty Bellman equation (UBE) whose solution converges to the true posterior variance over values.
We introduce a general-purpose policy optimization algorithm, Q-Uncertainty Soft Actor-Critic (QU-SAC) that can be applied for either risk-seeking or risk-averse policy optimization.
arXiv Detail & Related papers (2023-12-07T15:55:58Z) - Off-Policy Evaluation for Large Action Spaces via Policy Convolution [60.6953713877886]
Policy Convolution family of estimators uses latent structure within actions to strategically convolve the logging and target policies.
Experiments on synthetic and benchmark datasets demonstrate remarkable mean squared error (MSE) improvements when using PC.
arXiv Detail & Related papers (2023-10-24T01:00:01Z) - Diffusion Variational Autoencoder for Tackling Stochasticity in
Multi-Step Regression Stock Price Prediction [54.21695754082441]
Multi-step stock price prediction over a long-term horizon is crucial for forecasting its volatility.
Current solutions to multi-step stock price prediction are mostly designed for single-step, classification-based predictions.
We combine a deep hierarchical variational-autoencoder (VAE) and diffusion probabilistic techniques to do seq2seq stock prediction.
Our model is shown to outperform state-of-the-art solutions in terms of its prediction accuracy and variance.
arXiv Detail & Related papers (2023-08-18T16:21:15Z) - Bayesian Bilinear Neural Network for Predicting the Mid-price Dynamics
in Limit-Order Book Markets [84.90242084523565]
Traditional time-series econometric methods often appear incapable of capturing the true complexity of the multi-level interactions driving the price dynamics.
By adopting a state-of-the-art second-order optimization algorithm, we train a Bayesian bilinear neural network with temporal attention.
By addressing the use of predictive distributions to analyze errors and uncertainties associated with the estimated parameters and model forecasts, we thoroughly compare our Bayesian model with traditional ML alternatives.
arXiv Detail & Related papers (2022-03-07T18:59:54Z)
This list is automatically generated from the titles and abstracts of the papers in this site.
This site does not guarantee the quality of this site (including all information) and is not responsible for any consequences.