Structural Vector Autoregressive Analysis in a DataRich Environment

Abstract

Large panels of variables are used by policy makers in deciding on policy actions. Therefore it is desirable to include large information sets in models for economic analysis. In this survey methods are reviewed for accounting for the information in large sets of variables in vector autoregressive (VAR) models. This can be done by aggregating the variables or by reducing the parameter space to a manageable dimension. Factor models reduce the space of variables whereas large Bayesian VAR models and panel VARs reduce the parameter space. Global VARs use a mixed approach. They aggregate the variables and use a parsimonious parametrisation. All these methods are discussed in this survey although the main emphasize is on factor models.

Description

Keywords

panel data, factor models, structural vector autoregressive model, global vector autoregression, Bayesian vector autoregression

Dewey Decimal Classification

310 Sammlungen allgemeiner Statistiken, 330 Wirtschaft

Citation

Lütkepohl, Helmus.(2014). Structural Vector Autoregressive Analysis in a DataRich Environment. Sonderforschungsbereich 649: Ökonomisches Risiko. , 2014,4. 10.18452/4491