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AI Meets Fiscal Policy: Mapping Government Spending Actions Across 64 Countries

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  • Shuvam Das
  • Davide Furceri
  • Nikhil Patel
  • Mr. Adrian Peralta-Alva

Abstract

We build the first global quarterly narrative database of discretionary government spending actions by applying a fixed GPT–4.1 prompt to Economist Intelligence Unit (EIU) Country Reports. The resulting series identifies exogenous spending shocks—expansions and contractions—for an unbalanced panel of 64 countries from 1952:Q1 to 2023:Q4. We validate the database by (i) replicating expert narrative coding in Romer and Romer (2019), (ii) showing that the identified shocks predict subsequent movements in measured government spending, and (iii) establishing alignment with action-based consolidation measures in Adler et al. (2024). Using country-by-country VARs that treat the narrative indicator as an internal instrument, we derive the first set of comparable cumulative government spending multipliers. The median multiplier is 0.7 at horizons up to two years, with substantial heterogeneity across countries and over time. Pooled estimates imply larger multipliers in less open economies, under fixed exchange-rate regimes, and in downturns. Multipliers are smaller when uncertainty is high and larger when political support is stronger.

Suggested Citation

  • Shuvam Das & Davide Furceri & Nikhil Patel & Mr. Adrian Peralta-Alva, 2026. "AI Meets Fiscal Policy: Mapping Government Spending Actions Across 64 Countries," IMF Working Papers 2026/043, International Monetary Fund.
  • Handle: RePEc:imf:imfwpa:2026/043
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