Nowcasting Annual National Accounts with Quarterly Indicators: An Assessment of Widely Used Benchmarking Methods
March 18, 2016
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Summary
Benchmarking methods can be used to extrapolate (or “nowcast”) low-frequency benchmarks on the basis of available high-frequency indicators. Quarterly national accounts are a typical example, where a number of monthly and quarterly indicators of economic activity are used to calculate preliminary annual estimates of GDP. Using both simulated and real-life national accounts data, this paper aims at assessing the prediction accuracy of three benchmarking methods widely used in the national accounts compilation: the proportional Denton method, the proportional Cholette-Dagum method with first-order autoregressive error, and the regression-based Chow-Lin method. The results show that the Cholette-Dagum method provides the most accurate extrapolations when the indicator and the annual benchmarks move along the same trend. However, the Denton and Chow-Lin methods could prevail in real-life cases when the quarterly indicator temporarily deviates from the target series.
Subject: Exports, Imports, International trade, National accounts, Trade in goods
Keywords: absolute error, Benchmarking, BI ratio, Cholette-Dagum method, Chow-Lin method, Chow-Lin projection, Exports, Extrapolation, Imports, Quarterly National Accounts, regression model, Trade in goods, WP
Pages:
25
Volume:
2016
DOI:
Issue:
071
Series:
Working Paper No. 2016/071
Stock No:
WPIEA2016071
ISBN:
9781484301180
ISSN:
1018-5941





