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Autori principali: Lim, Seonkyu, Choi, Jeongwhan, Park, Noseong, Yoon, Sang-Ha, Kang, ShinHyuck, Kim, Young-Min, Kang, Hyunjoong
Natura: Preprint
Pubblicazione: 2024
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Accesso online:https://arxiv.org/abs/2409.08732
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author Lim, Seonkyu
Choi, Jeongwhan
Park, Noseong
Yoon, Sang-Ha
Kang, ShinHyuck
Kim, Young-Min
Kang, Hyunjoong
author_facet Lim, Seonkyu
Choi, Jeongwhan
Park, Noseong
Yoon, Sang-Ha
Kang, ShinHyuck
Kim, Young-Min
Kang, Hyunjoong
contents Gross domestic product (GDP) nowcasting is crucial for policy-making as GDP growth is a key indicator of economic conditions. Dynamic factor models (DFMs) have been widely adopted by government agencies for GDP nowcasting due to their ability to handle irregular or missing macroeconomic indicators and their interpretability. However, DFMs face two main challenges: i) the lack of capturing economic uncertainties such as sudden recessions or booms, and ii) the limitation of capturing irregular dynamics from mixed-frequency data. To address these challenges, we introduce NCDENow, a novel GDP nowcasting framework that integrates neural controlled differential equations (NCDEs) with DFMs. This integration effectively handles the dynamics of irregular time series. NCDENow consists of 3 main modules: i) factor extraction leveraging DFM, ii) dynamic modeling using NCDE, and iii) GDP growth prediction through regression. We evaluate NCDENow against 6 baselines on 2 real-world GDP datasets from South Korea and the United Kingdom, demonstrating its enhanced predictive capability. Our empirical results favor our method, highlighting the significant potential of integrating NCDE into nowcasting models. Our code and dataset are available at https://github.com/sklim84/NCDENow_CIKM2024.
format Preprint
id arxiv_https___arxiv_org_abs_2409_08732
institution arXiv
publishDate 2024
record_format arxiv
spellingShingle Bridging Dynamic Factor Models and Neural Controlled Differential Equations for Nowcasting GDP
Lim, Seonkyu
Choi, Jeongwhan
Park, Noseong
Yoon, Sang-Ha
Kang, ShinHyuck
Kim, Young-Min
Kang, Hyunjoong
Machine Learning
Artificial Intelligence
Gross domestic product (GDP) nowcasting is crucial for policy-making as GDP growth is a key indicator of economic conditions. Dynamic factor models (DFMs) have been widely adopted by government agencies for GDP nowcasting due to their ability to handle irregular or missing macroeconomic indicators and their interpretability. However, DFMs face two main challenges: i) the lack of capturing economic uncertainties such as sudden recessions or booms, and ii) the limitation of capturing irregular dynamics from mixed-frequency data. To address these challenges, we introduce NCDENow, a novel GDP nowcasting framework that integrates neural controlled differential equations (NCDEs) with DFMs. This integration effectively handles the dynamics of irregular time series. NCDENow consists of 3 main modules: i) factor extraction leveraging DFM, ii) dynamic modeling using NCDE, and iii) GDP growth prediction through regression. We evaluate NCDENow against 6 baselines on 2 real-world GDP datasets from South Korea and the United Kingdom, demonstrating its enhanced predictive capability. Our empirical results favor our method, highlighting the significant potential of integrating NCDE into nowcasting models. Our code and dataset are available at https://github.com/sklim84/NCDENow_CIKM2024.
title Bridging Dynamic Factor Models and Neural Controlled Differential Equations for Nowcasting GDP
topic Machine Learning
Artificial Intelligence
url https://arxiv.org/abs/2409.08732