Escape from model-land
Open Access
- 9 January 2019
- journal article
- research article
- Published by Walter de Gruyter GmbH in Economics: The Open-Access, Open-Assessment E-Journal
Abstract
Both mathematical modelling and simulation methods in general have contributed greatly to understanding, insight and forecasting in many fields including macroeconomics. Nevertheless, we must remain careful to distinguish model-land and model-land quantities from the real world. Decisions taken in the real world are more robust when informed by estimation of real-world quantities with transparent uncertainty quantification, than when based on "optimal" model-land quantities obtained from simulations of imperfect models optimized, perhaps optimal, in model-land. The authors present a short guide to some of the temptations and pitfalls of model-land, some directions towards the exit, and two ways to escape. Their aim is to improve decision support by providing relevant, adequate information regarding the real-world target of interest, or making it clear why today's model models are not up to that task for the particular target of interest. (Published in Special Issue Bio-psycho-social foundations of macroeconomics)Keywords
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