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Hommes, C., Massaro, D. and Salle, I. (2019). Monetary and Fiscal Policy Design at the Zero Lower Bound: Evidence from the Lab Economic Inquiry, 57(2):1120--1140.


  • Journal
    Economic Inquiry

The global economic crisis of 2007–2008 has pushed many advanced economies into a liquidity trap. We design a laboratory experiment on the effectiveness of policy measures to avoid expectation-driven liquidity traps. Monetary policy alone is not sufficient to avoid liquidity traps, even if it preventively cuts the interest rate when inflation falls below a threshold. However, monetary policy augmented with a fiscal switching rule succeeds in escaping liquidity trap episodes. We measure the effect of fiscal policy on expectations, and report larger-than-unity fiscal multipliers at the zero lower bound. Experimental results in different treatments are well explained by adaptive learning.