Finite Horizon Learning


Autoria(s): Branch, William A.; Evans, George W.; McGough, Bruce
Data(s)

07/06/2012

07/06/2012

2012

Resumo

Incorporating adaptive learning into macroeconomics requires assumptions about how agents incorporate their forecasts into their decision-making. We develop a theory of bounded rationality that we call finite-horizon learning. This approach generalizes the two existing benchmarks in the literature: Eulerequation learning, which assumes that consumption decisions are made to satisfy the one-step-ahead perceived Euler equation; and infinite-horizon learning, in which consumption today is determined optimally from an infinite-horizon optimization problem with given beliefs. In our approach, agents hold a finite forecasting/planning horizon. We find for the Ramsey model that the unique rational expectations equilibrium is E-stable at all horizons. However, transitional dynamics can differ significantly depending upon the horizon.

Identificador

http://hdl.handle.net/10943/319

Publicador

University of St Andrews

University of California

Oregon State University

Relação

SIRE DISCUSSION PAPER;SIRE-DP-2012-16

Palavras-Chave #Planning horizon #bounded rationality #dynamic optimization #adpative learning #Ramsey Model
Tipo

Working Paper