Real-time squared: A real-time data set for real-time GDP forecasting |
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Authors: | Roberto Giuseppe |
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Institution: | aDepartment of Economics, University of Bologna, Strada Maggiore 45, 40125 Bologna, Italy;bResearch Department, Bank of Italy, via Nazionale 91, 00184 Rome, Italy |
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Abstract: | This paper uses real-time data to mimic real-time GDP forecasting activity. Through automatic searches for the best indicators for predicting GDP one and four steps ahead, we compare the out-of-sample forecasting performance of adaptive models using different data vintages, and produce three main findings. First, despite data revisions, the forecasting performance of models with indicators is better, but this advantage tends to vanish over longer forecasting horizons. Second, the practice of using fully updated datasets at the time the forecast is made (i.e., taking the best available measures of today's economic situation) does not appear to bring any effective improvement in forecasting ability: the first GDP release is predicted equally well by models using real-time data as by models using the latest available data. Third, although the first release is a rational forecast of GDP data after all statistical revisions have taken place, the forecast based on the latest available GDP data (i.e. the “temporarily best” measures) may be improved by combining preliminary official releases with one-step-ahead forecasts. |
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Keywords: | Short-term GDP forecasting Bridge model Real-time data-set Automatic forecasting First release Final GDP prediction |
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