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Journal Article Economic growth nowcasting through deep learning: A hybrid model of variational autoencoders and transformers
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Authors
Young-Min Kim, Yeonhee Lee
Issue Date
2025-08
Citation
ETRI Journal, v.권호미정, pp.1-20
ISSN
1225-6463
Publisher
한국전자통신연구원
Language
English
Type
Journal Article
DOI
https://dx.doi.org/10.4218/etrij.2024-0429
Abstract
Accurate GDP quarter-on-quarter (QoQ) nowcasting is crucial for timely economic decisions and policy formulation, requiring models that effectively capture complex economic dynamics. Traditional methods, like dynamic factor models, have been widely used but face two key limitations: (i) limited representation of latent factors, which inadequately capture economic dynamics, and (ii) modest nowcasting performance due to reliance on simple regression-based estimations. This paper introduces a hybrid approach that utilizes variational autoencoders to extract latent factors more effectively, enhancing factor representation. Simultaneously, a transformer encoder improves nowcasting accuracy by capturing intricate relationships among these factors. Our model is further augmented with uncertainty projection, auxiliary input, and cross-attention modules, enhancing both accuracy and interpretability. Experimental results show that our approach significantly outperforms traditional models across key metrics. This paper highlights the advantages of integrating advanced deep learning techniques into GDP QoQ economic forecasting, with the potential to influence future research and set a new standard for accuracy in GDP nowcasting.
KSP Keywords
Auxiliary input, Dynamic factor models, Economic Decisions, Economic growth, Factor representation, Hybrid Approach, Hybrid model, Latent factors, Regression-based, Traditional methods, deep learning(DL)
This work is distributed under the term of Korea Open Government License (KOGL)
(Type 4: : Type 1 + Commercial Use Prohibition+Change Prohibition)
Type 4: