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Contagion in Global Bond Markets

  • Sang-Kuck CHUNG (Department of Management, College of Business, Inje University) ;
  • Vasila Shukhratovna ABDULLAEVA (Department of International Trade, College of Business, Inje University) ;
  • Sun-Jae MOON (Department of International Trade, College of Business, Inje University)
  • Received : 2024.06.13
  • Accepted : 2024.08.05
  • Published : 2024.08.30

Abstract

Purpose: The paper analyzes for detecting unexpected shocks such as global financial crisis and COVID-19 pandemic, and contagion between countries by capturing in the mean-shift, variance-covariance-shift, and skewness-coskewness-shift parameters of interest rates. Research design, data and methodology: A flexible multivariate model of interest rates is provided by allowing for regime switching and a joint skewed normal distribution. The model is applying to the structural breaks of crisis and contagion between the US and the selected global bond markets during the global financial crisis and COVID-19 pandemic, respectively. Inspection of the moment statistics weakly suggests a flight to safety to the US during the global financial crisis and to Canada during the COVID-19 pandemic. Results: The results indicate that risk averse investors had a higher risk appetite for the US and Canada assets during the crisis regimes, compared to their counterparts. Conclusions: The results show that coskewness contagion dominates correlation contagion, and coskewness contagion is significant for the Korea and Japan-US pairs for the global financial crisis and the Euro-US pair for the COVID-19 pandemic. All channels of structural breaks of crisis and contagion are significant when considered jointly, reinforcing the need to consider contagion and structural breaks during crises in a multivariate setting.

Keywords

Acknowledgement

The corresponding author would thank colleagues who attended the department seminars for helpful comments on an earlier paper, on which this paper builds. This work was supported by the 2023 Inje University research grant.

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