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Macroeconomic forecasting and sovereign risk assessment using deep learning techniques

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Listed:
  • Anastasios Petropoulos
  • Vassilis Siakoulis
  • Konstantinos P. Panousis
  • Loukas Papadoulas
  • Sotirios Chatzis

Abstract

In this study, we propose a novel approach of nowcasting and forecasting the macroeconomic status of a country using deep learning techniques. We focus particularly on the US economy but the methodology can be applied also to other economies. Specifically US economy has suffered a severe recession from 2008 to 2010 which practically breaks out conventional econometrics model attempts. Deep learning has the advantage that it models all macro variables simultaneously taking into account all interdependencies among them and detecting non-linear patterns which cannot be easily addressed under a univariate modelling framework. Our empirical results indicate that the deep learning methods have a superior out-of-sample performance when compared to traditional econometric techniques such as Bayesian Model Averaging (BMA). Therefore our results provide a concise view of a more robust method for assessing sovereign risk which is a crucial component in investment and monetary decisions.

Suggested Citation

  • Anastasios Petropoulos & Vassilis Siakoulis & Konstantinos P. Panousis & Loukas Papadoulas & Sotirios Chatzis, 2023. "Macroeconomic forecasting and sovereign risk assessment using deep learning techniques," Papers 2301.09856, arXiv.org.
  • Handle: RePEc:arx:papers:2301.09856
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    References listed on IDEAS

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    3. Bedendo, Mascia & Colla, Paolo, 2015. "Sovereign and corporate credit risk: Evidence from the Eurozone," Journal of Corporate Finance, Elsevier, vol. 33(C), pages 34-52.
    4. Yun Liao, 2017. "Machine Learning in Macro-Economic Series Forecasting," International Journal of Economics and Finance, Canadian Center of Science and Education, vol. 9(12), pages 71-76, December.
    5. Aaron Smalter Hall, 2018. "Machine Learning Approaches to Macroeconomic Forecasting," Economic Review, Federal Reserve Bank of Kansas City, issue Q IV, pages 63-81.
    6. Manav Kaushik & A K Giri, 2020. "Forecasting Foreign Exchange Rate: A Multivariate Comparative Analysis between Traditional Econometric, Contemporary Machine Learning & Deep Learning Techniques," Papers 2002.10247, arXiv.org.
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