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Keywords: Mixed-data sampling
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Journal Articles
Comparative computer simulation and empirical analysis of MIDAS and artificial neural network-UMIDAS models for short- and long-term US GDP forecasting
Available to Purchase
Journal:
Competitiveness Review
Competitiveness Review (2025) 35 (4): 670–684.
Published: 27 August 2024
...Samir K H. Safi; Olajide Idris Sanusi; Afreen Arif Purpose This study aims to evaluate linear mixed data sampling (MIDAS), nonlinear artificial neural networks (ANNs) and a hybrid approach for exploiting high-frequency information to improve low-frequency gross domestic product (GDP) forecasting...
