Economic forecasting at high‐frequency intervals
作者:
L. R. Klein,
J. Y. Park,
期刊:
Journal of Forecasting
(WILEY Available online 1993)
卷期:
Volume 12,
issue 3‐4
页码: 301-319
ISSN:0277-6693
年代: 1993
DOI:10.1002/for.3980120310
出版商: John Wiley&Sons, Ltd.
关键词: High‐frequency forecasting;The Quarterly National Income and Product Accounts (NIPA);Monthly economic indicators;Mixing frequencies;Combining forecasts ARIMA;Box‐Jenkins methods;Transfer functions;Principal components;Business cycles;The 1990–1991 recessi
数据来源: WILEY
摘要:
AbstractForecasting on the basis of the daily flow of monthly or more frequent statistical reports on the economy can enhance the predictive accuracy of quarterly structural models. The high degree of serial correlation in economic data can be used advantageously in quarterly forecasting for a horizon as long as 6 months—perhaps somewhat longer. The model used for high‐frequency (weekly) forecasting of the US economy has a national accounting structure and tries to follow the choice of indicators that are used in preparing early estimates of national income and product accounts (NIPA). Estimates are separately generated for the income side and the product side of NIPA. At the level of GDP and closely related aggregates a third prediction is also generated from estimates of the principal components of major monthly indicators. A simple average of three estimates of GDP, together with detail on NIPA components and scores of monthly indicators has been produced every weekend, summarizing the business week's flow of information. This procedure is followed not only for producing a steady stream of high‐frequency forecasts but also for providing adjustment factors that can be used for model recalibration, without judgemental input. The tracking of the US economy is illustrated for the period starting before the invasion of Kuwait until the end of the Gul
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