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Permanent and Transitory Factors Affecting the Dynamics of the Term Structure of Interest Rates

Author

Listed:
  • Christophe PÉRIGNON

    (Anderson School, UCLA)

  • Christophe VILLA

    (ENSAI, CREST-LSM and CREREG-Axe Finance)

Abstract

This paper proposes a novel methodology, based on the Common Principal Component analysis, allowing one to estimate the factors driving the term structure of interest rates, in the presence of time-varying covariance structure. The advantages of this method are first, that, unlike classical principal component analysis, common factors can be estimated without assuming that the volatility of the factors is constant; and second, that the factor structure can be decomposed into permanent and transitory common factors. We conclude that only permanent factors are relevant for modeling the dynamics of interest rates, and that the common principal component approach appears to be more accurate than the classical principal component one to estimate the risk factor structure.

Suggested Citation

  • Christophe PÉRIGNON & Christophe VILLA, 2002. "Permanent and Transitory Factors Affecting the Dynamics of the Term Structure of Interest Rates," FAME Research Paper Series rp53, International Center for Financial Asset Management and Engineering.
  • Handle: RePEc:fam:rpseri:rp53
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    References listed on IDEAS

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