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Research Article

Macroeconomic forecasting for Pakistan in a data-rich environment

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Pages 1077-1091 | Published online: 12 Oct 2020
 

ABSTRACT

This article forecasts the CPI inflation, GDP growth and the weighted average overnight repurchase rate in Pakistan using 161 predictors covering a period from July 2007 to July 2017. We use the naïve mean model and the autoregressive model as benchmark models and compare their forecasting performance against the dynamic factor model (DFM) and sophisticated machine learning methods such as the Ridge regression, the LASSO, the Elastic net and a few variants of Bagging. The main purpose of the article is to determine, how well the commonly used DFM which has been used for time series forecasting for a long time, performs against the recently developed penalized regression methods in forecasting key macroeconomic variables in Pakistan. We forecast the variables of interest over 12 months forecast horizon. The forecast evaluation criteria used to compare the forecast performance of these models is the RMSE and MASE. For each variable of interest, we find that, for majority of the cases considered, one of the competing approaches outperform the benchmark models and other competing approaches at majority of forecast horizons. Our results show that, on the balance, the machine learning approaches perform better than the benchmark, the autoregressive and the DFM.

JEL CLASSIFICATION:

Data availability statement

The data that support the findings of this study are available from the corresponding author, Dr. Ateeb Akhter Shah Syed, upon reasonable request.

Disclosure statement

No potential conflict of interest was reported by the authors.

Notes

1 In Pakistan, the GDP numbers are only available at an annual frequency. Therefore, all the paper that have used a monthly dataset have used LSM as a proxy for GDP among other variables. For example, Hussain, Kalim, and Rehman (Citation2018) also use the growth of LSM as a proxy for GDP growth.

2 The authors estimated the IPI recently and inform that the IPI covers about 23% of GDP in Pakistan against the LSM which they claim only covers about 10% of GDP. The authors estimated the IPI from July 1990 to June 2018.LSM in Pakistan is reported officially by Pakistan Bureau of Statistics (PBS), however it is well maintained by the central bank in Pakistan, therefore we took the data of LSM from the SBP.

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