Inflation Forecasting for Pakistan in a Data-rich Environment

Authors

  • Syed Ateeb Akhter Shah State Bank of Pakistan
  • Muhammad Ishtiaq State Bank of Pakistan
  • Sumbal Qureshi State Bank of Pakistan
  • Kaneez Fatima Institute of Management Sciences, University of Balochistan, Quetta, Balochistan, Pakistan

DOI:

https://doi.org/10.30541/v61i4pp.643-658

Keywords:

Inflation, Pakistan, Classical Models, Machine Learning, LASSO

Abstract

This paper uses machine learning methods to forecast the year-on-year CPI inflation of Pakistan and compare their forecasting performance against the comprehensive traditional forecasting suite contained in Hanif and Malik (2015). It also augments the comprehensive forecasting suite with the dynamic factor model which is able to handle a large amount of information and put all of these models in competition against the latest machine learning models. A set of 117 predictors covering a period of July 1995 to June 2020 is used for this purpose. We set the naïve mean model as the benchmark and compare its forecasting performance against 14 traditional and 5 sophisticated machine learning models. We forecast the year-on-year CPI inflation over a 24 months horizon. Forecasting performance is measured using the RMSE. Our results show that the machine learning approaches perform better than the traditional econometric models at 18 forecast horizons.

Downloads

Published

2023-04-10

Issue

Section

Articles

How to Cite

Inflation Forecasting for Pakistan in a Data-rich Environment. (2023). The Pakistan Development Review, 61(4), pp.643-658. https://doi.org/10.30541/v61i4pp.643-658

Most read articles by the same author(s)