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Focused Information Criterion for Locally Misspecified Vector Autoregressive Models
- Source :
- Econometric Reviews, 38(7), 763-792. Taylor & Francis Ltd, Econometric Reviews, 38(7), 763-792. Routledge/Taylor & Francis Group
- Publication Year :
- 2019
-
Abstract
- This paper investigates the focused information criterion and plug-in average for vector autoregressive models with local-to-zero misspecification. These methods have the advantage of focusing on a quantity of interest rather than aiming at overall model fit. Any (suxfb03;ciently regular) function of the parameters can be used as a quantity of interest. We determine the asymptotic properties and elaborate on the role of the locally misspecified parameters. In particular, we show that the inability to consistently estimate locally misspecified parameters translates into suboptimal selection and averaging. We apply this framework to impulse response analysis. A Monte Carlo simulation study supports our claims.
- Subjects :
- Economics and Econometrics
Mathematical optimization
model selection
Computer science
impulse responses
PREDICTION
Monte Carlo method
c01 - Econometrics
c53 - "Forecasting and Prediction Methods
Simulation Methods "
local misspecification
ORDER SELECTION
IMPULSE-RESPONSE ANALYSIS
Model Construction and Estimation
model uncertainty
Econometrics
Focused information criteria
Selection (genetic algorithm)
Impulse response
c51 - Model Construction and Estimation
Model selection
Focused information criterion
frequentist model averaging
Function (mathematics)
vector autoregressive models
Autoregressive model
Quantitative Policy Modeling
Forecasting and Prediction Methods
Simulation Methods
c54 - Quantitative Policy Modeling
Subjects
Details
- ISSN :
- 07474938
- Database :
- OpenAIRE
- Journal :
- Econometric Reviews, 38(7), 763-792. Taylor & Francis Ltd, Econometric Reviews, 38(7), 763-792. Routledge/Taylor & Francis Group
- Accession number :
- edsair.doi.dedup.....d12fa6e5546f872ef11b7314799a991d