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Making the most of high inflation

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journal contribution
posted on 2015-04-24, 13:39 authored by Wojciech Charemza, S. Makarova, I. Shah
The article examines the relationship between the real effects of inflation and its level in countries with frequent episodes of high inflation. The real effects are computed as asymmetric impulse responses of output to inflation separately for the regimes with different signs of the differences between the expected inflation and the predicted output-neutral inflation. It is found that, with the increase in inflation, such effects increase for the regime with the positive sign, relatively to the effects for the regime with the negative sign. It is also shown that this finding is valid for most countries with high inflation episodes, where inflation is greater than 4.8% for at least 25% of quarterly observations. This leads to a simple policy prescription that, in economies with frequent high inflation episodes, anti-inflationary monetary decisions are least damaging for output if undertaken in the periods when the difference between the expected and output-neutral inflation is negative.

Funding

Financial support of the ESRC/ORA project RES-360-25-0003 Probabilistic Approach to Assessing Macroeconomic Uncertainties is gratefully acknowledged. This research used the ALICE High Performance Computing Facility at the University of Leicester.

History

Citation

Applied Economics (2015)

Author affiliation

/Organisation/COLLEGE OF SOCIAL SCIENCE/Department of Economics

Version

  • AM (Accepted Manuscript)

Published in

Applied Economics (2015)

Publisher

Taylor & Francis (Routledge)

issn

0003-6846

eissn

1466-4283

Copyright date

2015

Available date

2016-09-16

Publisher version

http://www.tandfonline.com/doi/abs/10.1080/00036846.2015.1021462

Language

en

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