A quarterly empirical model for the Danish economy: a stock-flow consistent approach
Mikael Randrup Byrialsen,
Hamid Raza and
Sebastian Valdecantos
Chapter 6 in Post-Keynesian Economics for the Future, 2024, pp 85-106 from Edward Elgar Publishing
Abstract:
In this chapter we present a new quarterly model for the Danish economy with a focus on the main assumptions underlying the model and the construction of the databank. The purpose of the model is to build a platform for analysing the interdependencies between the real and financial sides of the economy in Denmark while adopting a stock-flow consistent approach. The model is estimated on quarterly data using Danish data for the period 2005–2020. In the final part of the chapter the model is validated against the actual data in two different ways: firstly, by comparing the simulation results with the actual trajectories of the main macroeconomic variables, and secondly, by performing a standard shock to public spending and investigating how the model behaves. The model is able to reproduce the actual dynamics of the key variables of the Danish economy in a fairly accurate way, just like the simulations carried out so far also show that the model behaves in line with the underlying economic theory.
Keywords: Economics and Finance (search for similar items in EconPapers)
Date: 2024
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