Quantifying Uncertainty in Economics Policy Predictions: A Bayesian & Monte Carlo based Data-Driven Approach

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Abstract

Economic policy uncertainty relates to the unpredictability in government policies that can impact economic decision-making. High policy uncertainty can lead to less investment, slower economic growth, and increased volatility in financial markets. This study aims to quantify the uncertainty by employing a data-driven approach based on Bayesian Hierarchical Modeling (BHM) and Markov Chain Monte Carlo simulations. This research focuses essentially on key policy domains such as monetary policy, fiscal policy, and trade policy where uncertainty underlies crucial influences upon economic decisions. The methodology integrates data collection, feature scaling, normalization, Bayesian inference using MCMC simulations, uncertainty quantification and policy prediction to produce predictive insights under various economic scenarios. The Bayesian Hierarchical Model was employed to estimate the relationships between macroeconomic variables and policy outcomes. The posterior distribution results revealed significant predictors, with certain factors like monetary policy uncertainty exerting a substantial negative impact, while others such as equity market-related uncertainty showed positive influence. A rigorous uncertainty quantification step provided credible intervals for predicted outcomes with a 95% credible interval ranging between 0.276 - 0.359. This enabled an assessment of the potential variability in predictions based on differing levels of economic uncertainty. The study concluded with policy predictions generated under two distinct economic scenarios. Under conditions of high uncertainty, the predicted policy outcome was -0.2346, while a moderate uncertainty scenario resulted in a less negative outcome of -0.2060. These results demonstrate the sensitivity of economic policy predictions to varying levels of uncertainty. The findings provide a robust framework for understanding and quantifying uncertainty in economic policy-making. By applying BHM and Monte Carlo methods, this study contributes to the development of more resilient and adaptive economic strategies in the face of uncertainty.

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