Please use this identifier to cite or link to this item: http://hdl.handle.net/2445/175054
Title: Nowcasting and forecasting GDP growth with machine-learning sentiment indicators
Author: Clavería González, Óscar
Monte Moreno, Enric
Torra Porras, Salvador
Keywords: Creixement econòmic
Anàlisi de regressió
Genètica
Economic development
Regression analysis
Genetics
Issue Date: 2021
Publisher: Universitat de Barcelona. Facultat d'Economia i Empresa
Series/Report no: [WP E-IR21/03]
[WP E-AQR21/01]
Abstract: We apply the two-step machine-learning method proposed by Claveria et al. (2021) to generate country-specific sentiment indicators that provide estimates of year-on-year GDP growth rates. In the first step, by means of genetic programming, business and consumer expectations are evolved to derive sentiment indicators for 19 European economies. In the second step, the sentiment indicators are iteratively re-computed and combined each period to forecast yearly growth rates. To assess the performance of the proposed approach, we have designed two out-of-sample experiments: a nowcasting exercise in which we recursively generate estimates of GDP at the end of each quarter using the latest survey data available, and an iterative forecasting exercise for different forecast horizons We found that forecasts generated with the sentiment indicators outperform those obtained with time series models. These results show the potential of the methodology as a predictive tool
Note: Reproducció del document publicat a: http://www.ub.edu/irea/working_papers/2021/202103.pdf
It is part of: IREA – Working Papers, 2021, IR21/03
AQR – Working Papers, 2021, AQR21/01
URI: http://hdl.handle.net/2445/175054
Appears in Collections:Documents de treball (Institut de Recerca en Economia Aplicada Regional i Pública (IREA))
AQR (Grup d’Anàlisi Quantitativa Regional) – Working Papers

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