Baysian Model Averaging, Learning and Model Selection


Autoria(s): Mitra, Kaushik; Evans, George W.; Honkapohja, Seppo
Data(s)

07/06/2012

07/06/2012

2012

Resumo

Agents have two forecasting models, one consistent with the unique rational expectations equilibrium, another that assumes a time-varying parameter structure. When agents use Bayesian updating to choose between models in a self-referential system, we find that learning dynamics lead to selection of one of the two models. However, there are parameter regions for which the non-rational forecasting model is selected in the long-run. A key structural parameter governing outcomes measures the degree of expectations feedback in Muth's model of price determination.

Identificador

http://hdl.handle.net/10943/314

Publicador

University of St Andrews

Bank of Finland

Relação

SIRE DISCUSSION PAPER;SIRE-DP-2012-11

Palavras-Chave #Learning dynamics #Bayesian model averaging #grain of truth #self-referential systems
Tipo

Working Paper