Estimating U.S. Output Growth with Vintage Data in a State-Space Framework

This study uses a state-space model to estimate the 'true' unobserved measure of total output in the U.S. economy. The analysis uses the entire history (i.e., all vintages) of selected real-time data series to compute revisions and corresponding statistics for those series. The revision st...

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Veröffentlicht in:Review 2009-07, Vol.91 (4), p.349-382
Hauptverfasser: Anderson, Richard G, Gascon, Charles S
Format: Artikel
Sprache:eng
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Zusammenfassung:This study uses a state-space model to estimate the 'true' unobserved measure of total output in the U.S. economy. The analysis uses the entire history (i.e., all vintages) of selected real-time data series to compute revisions and corresponding statistics for those series. The revision statistics, along with the most recent data vintage, are used in a state-space model to extract filtered estimates of the 'true' series. Under certain assumptions, Monte Carlo simulations suggest this framework can improve published estimates by as much as 30 percent, lasting an average of 11 periods. Real-time experiments using a measure of real gross domestic product show improvement closer to 10 percent, lasting for 1 to 2 quarters. Reprinted by permission of the Federal Reserve Bank of St. Louis
ISSN:0014-9187
DOI:10.20955/r.91.349-370