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   <subfield code="a">Gallo</subfield>
   <subfield code="D">Giampiero</subfield>
   <subfield code="u">Deipartmento di Statistica G. Parenti, Università di Firenze, Viale G. B. Morgagni 59, 50134, Firenze, Italy</subfield>
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   <subfield code="a">Forecast uncertainty reduction in nonlinear models</subfield>
   <subfield code="h">[Elektronische Daten]</subfield>
   <subfield code="c">[Giampiero Gallo]</subfield>
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   <subfield code="a">Summary: In spite of widespread criticism, macroeconometric models are still most popular for forecasting and policy, analysis. When the most recent data available on both the exogenous and the endogenous variable are preliminaryestimates subject to a revision process, the estimators of the coefficients are affected by the presence of the preliminary data, the projections for the exogenous variables are affected by the presence of data uncertainty, the values of lagged dependent variables used as initial values for, forecasts are still subject to revisions. Since several provisional estimates of the value of a certain variable are available before the data are finalized, in this paper they are seen as repeated predictions of the same quantity (referring to different information sets not necessarily overlapping with one other) to be exploited in a forecast combination framework. The components of the asymptotic bias and of the asymptotic mean square prediction error related to data uncertainty can be reduced or eliminated by using a forecast combination technique which makes the deterministic and the Monte Carlo predictors not worse than either predictor used with or without provisional data. The precision of the forecast with the nonlinear model can be improved if the provisional data are not rational predictions of the final data and contain systematic effects.</subfield>
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   <subfield code="a">Società Italiana di Statistica, 1996</subfield>
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   <subfield code="t">Journal of the Italian Statistical Society</subfield>
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   <subfield code="g">5/1(1996-04-01), 73-98</subfield>
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