DETECTING AND ANALYZING THE EFFECTS OF TIME-VARYING PARAMETERS IN DSGE MODELS
成果类型:
Article
署名作者:
Canova, Fabio; Ferroni, Filippo; Matthes, Christian
署名单位:
BI Norwegian Business School; Centre for Economic Policy Research - UK; Federal Reserve System - USA; Federal Reserve Bank - Chicago; Indiana University System; Indiana University Bloomington; Federal Reserve System - USA; Federal Reserve Bank - Richmond
刊物名称:
INTERNATIONAL ECONOMIC REVIEW
ISSN/ISSBN:
0020-6598
DOI:
10.1111/iere.12418
发表日期:
2020
页码:
105-125
关键词:
risk
uncertainty
volatility
US
摘要:
We study how structural parameter variations affect the decision rules and economic inference. We provide diagnostics to detect parameter variations and to ascertain whether they are exogenous or endogenous. A constant parameter model poorly approximates a time-varying data generating process (DGP), except in a handful of relevant cases. Linear approximations do not produce time-varying decision rules; higher-order approximations can do this only if parameter disturbances are treated as decision rule coefficients. Structural responses are time invariant regardless of order of approximation. Adding endogenous variations to the parameter controlling leverage in Gertler and Karadi's model substantially improves the fit of the model.