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Goodness-of-Fit of Logistic Regression of the Default Rate on GDP Growth Rate and on CDX Indices

Author

Listed:
  • Kuang-Hua Hu

    (Finance and Accounting Research Center, School of Accounting, Nanfang College, Guangzhou 510970, China)

  • Shih-Kuei Lin

    (Department of Money and Banking, National Chengchi University, Taipei 116, Taiwan)

  • Yung-Kang Ching

    (Risk Management Department, China Development Financial Holding, Taipei 105, Taiwan)

  • Ming-Chin Hung

    (Department of Financial Engineering and Actuarial Mathematics, Soochow University, Taipei 100, Taiwan)

Abstract

Under the Basel II and Basel III agreements, the probability of default (PD) is a key parameter used in calculating expected credit loss (ECL), which is typically defined as: PD × Loss Given Default × Exposure at Default. In practice or in regulatory requirements, gross domestic product (GDP) has been adopted in the PD estimation model. Due to the problem of excessive fluctuation and highly volatile ECL estimation, models that produce satisfactory PD and thus ECL estimations in the context of existing risk management techniques are lacking. In this study, we explore the usage of the credit default swap index (CDX), a market’s expectation of future PD, as a predictor of the default rate (DR). By comparing the goodness-of-fit of logistic regression, several conclusions are drawn. Firstly, in general, GDP has considerable explanatory power for the default rate which is consistent with current models in practice. Secondly, although both GDP and CDX fit the DR well for rating B class, CDX has a significantly better fit of DR for ratings [A, Baa, Ba]. Thirdly, compared with low-rated companies, the relationship between the DR and GDP is relatively weak for rating A. This phenomenon implies that, in addition to using macroeconomic variables and firm-specific explanatory variables in the PD estimation model, high-rated companies exhibit a greater need to use market supplemental information, such as CDX, to capture the changes in the DR.

Suggested Citation

  • Kuang-Hua Hu & Shih-Kuei Lin & Yung-Kang Ching & Ming-Chin Hung, 2021. "Goodness-of-Fit of Logistic Regression of the Default Rate on GDP Growth Rate and on CDX Indices," Mathematics, MDPI, vol. 9(16), pages 1-14, August.
  • Handle: RePEc:gam:jmathe:v:9:y:2021:i:16:p:1930-:d:613721
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    References listed on IDEAS

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