Forecasting Inflation with a Simple and Accurate Benchmark: The Case of the US and a Set of Inflation Targeting Countries
Abstract
We evaluate the ability of several univariate models to predict inflation in the US and in a number of inflation targeting countries at different forecasting horizons. We focus on forecasts coming from a family of ten seasonal models that we call the Driftless Extended Seasonal ARIMA (DESARIMA) family. Using out-of-sample Root Mean Squared Prediction Errors (RMSPE) we compare the forecasting accuracy of the DESARIMA family with that of traditional univariate time-series benchmarks available in the literature. Our results show that DESARIMA-based forecasts display lower RMSPE at short horizons for every single country, with the exception of one case. We obtain mixed results at longer horizons. In particular, when the family-median forecast is considered, in more than half of the countries our DESARIMA-based forecasts outperform the benchmarks at long horizons. Remarkably, the forecasting accuracy of our DESARIMA family is high in stable-inflation countries, for which the RMSPE is around 100 basis points when a prediction is made 24 and even 36 months ahead.
Más información
Título según WOS: | Forecasting Inflation with a Simple and Accurate Benchmark: The Case of the US and a Set of Inflation Targeting Countries |
Título de la Revista: | FINANCE A UVER-CZECH JOURNAL OF ECONOMICS AND FINANCE |
Volumen: | 65(1) |
Editorial: | Faculty of Social Sciences |
Fecha de publicación: | 2015 |
Página de inicio: | 2 |
Página final: | 29 |
Idioma: | English |
URL: | http://journal.fsv.cuni.cz/storage/1314_medel.pdf |
Notas: | ISI |