MIDAS Modeling for Core Inflation Forecasting

Working papers | 2017 | N 72

Authors

Keywords:

MIDAS, Distributed lags, Core inflation, Forecasting

Abstract

This paper presents a forecasting exercise that assesses the predictive potential of a daily Price index based on online prices. Prices are compiled using web scrapping services provided by the private company PriceStats in cooperation with a finance research corporation, State Street Global Markets. This online price index is tested as a predictor of the monthly core inflation rate in Argentina, known as “resto IPCBA” and published by the Statistics Office of the City of Buenos Aires. Mixed frequency regression models offer a convenient arrangement to accommodate variables sampled at different frequencies and hence many specifications are evaluated. Different classes of these models are found to produce a slight boost in out-of-sample predictive performance at immediate horizons when compared to benchmark naïve models and estimators. Additionally, an analysis of intra-period forecasts, reveals a slight trend towards increased forecast accuracy as the daily variable approaches one full month for certain horizons.

JEL classification: C22, C53, E37

Portada documento de trabajo 72

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Published

2017-12-01

How to Cite

Libonatti, L. (2017). MIDAS Modeling for Core Inflation Forecasting: Working papers | 2017 | N 72. Working papers. retrieved from https://bcra.ojs.theke.io/documentos_de_trabajo/article/view/261

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Articles