Forecasting and conditional projection using realistic prior distributions
Authors:
Thomas Doan a;
Robert Litterman b;
Christopher Sims c
| Affiliations: | a Northwestern University, |
| b Federal Reserve Rank of Minneapolis, | |
| c University of Minnesota, |
DOI:
10.1080/07474938408800053
Publication Frequency:
6 issues per year
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Abstract
This paper develops a forecasting procedure based on a Bayesian method for estimating vector autoregressions. The procedure is applied t o 10 macroeconomic variables and is shown to improve out-of-sample forecasts relative to univariate equations. Although cross-variable responses are damped by the prior, considerable interaction among the variables is shown to be captured by the estimates
We provide unconditional forecasts as of 1982:12 and 1983:3. We also describe how a model such as this can be used to make conditional projections and to analyze policy alternatives. As an example, we analyze a Congressional Budget Office forecast made in 1982: 12 Although no automatic causal interpretations arise from models like ours, they provide a detailed characterization of the dynamic statistical interdependence of a set of economic variables, information that may help in evaluating causal hypotheses without containing any such hypotheses. |
| Keywords: Rayesian Analysis; Conditional Projections; Forecasting; Macroeconomic Modeling; Vector Autoregressions |
| view references (16) : view citations |

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