Forecasting in small open emerging economies Evidence from Thailand
By: Paponpat Taveeapiradeecharoen, Nattapol Aunsri
Potential Business Impact:
Predicts rising prices better using many clues.
Forecasting inflation in small open economies is difficult because limited time series and strong external exposures create an imbalance between few observations and many potential predictors. We study this challenge using Thailand as a representative case, combining more than 450 domestic and international indicators. We evaluate modern Bayesian shrinkage and factor models, including Horseshoe regressions, factor-augmented autoregressions, factor-augmented VARs, dynamic factor models, and Bayesian additive regression trees. Our results show that factor models dominate at short horizons, when global shocks and exchange rate movements drive inflation, while shrinkage-based regressions perform best at longer horizons. These models not only improve point and density forecasts but also enhance tail-risk performance at the one-year horizon. Shrinkage diagnostics, on the other hand, additionally reveal that Google Trends variables, especially those related to food essential goods and housing costs, progressively rotate into predictive importance as the horizon lengthens. This underscores their role as forward-looking indicators of household inflation expectations in small open economies.
Similar Papers
Macroeconomic Forecasting for the G7 countries under Uncertainty Shocks
Econometrics
Helps predict economy better during uncertain times.
An Interpretable Machine Learning Approach in Predicting Inflation Using Payments System Data: A Case Study of Indonesia
General Economics
Helps predict money prices better using smart computers.
Bayesian Shrinkage in High-Dimensional VAR Models: A Comparative Study
Methodology
Helps computers understand complex data better.