4.1 Article

Tail dependence and smoothness of time series

Journal

TEST
Volume 30, Issue 1, Pages 198-210

Publisher

SPRINGER
DOI: 10.1007/s11749-020-00709-z

Keywords

Extreme values; Smoothness coefficient; Tail dependence coefficient

Funding

  1. research unit Centre of Mathematics and Applications of University of Beira Interior - FCT (FundacAo para a Ciencia e a Tecnologia) [UIDB/00212/2020 -]
  2. FCT-Fundao para a Cincia e a Tecnologia of Centre of Mathematics of the University of Minho [UIDB/00013/2020]
  3. FCT-Fundao para a Cincia e a Tecnologia of Centre of Statistics and its Applications of University of Lisbon [UIDB/00006/2020]
  4. FCT-Fundao para a Cincia e a Tecnologia [PTDC/MAT-STA/28243/2017]
  5. Fundação para a Ciência e a Tecnologia [PTDC/MAT-STA/28243/2017, UIDB/00013/2020] Funding Source: FCT

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The paper proposes a new smoothness coefficient to evaluate the degree of smoothness/oscillation in the trajectory of a process, with an intuitive reading and simple estimation. An application to financial series is illustrated.
The risk of catastrophes is related to the possibility of occurring extreme values. Several statistical methodologies have been developed in order to evaluate the propensity of a process for the occurrence of high values and the permanence of these in time. The extremal index. (Leadbetter in Z Wahrscheinlichkeitstheor Verw Geb 65:291306, 1983) allows to infer the tendency for clustering of high values, but does not allow to evaluate the greater or less amount of oscillations in a cluster. The estimation of. entails the validation of local dependence conditions regulating the distance between high levels oscillations of the process, which is difficult to implement in practice. In this work, we propose a smoothness coefficient to evaluate the degree of smoothness/oscillation in the trajectory of a process, with an intuitive reading and simple estimation. Application in some examples will be provided. We will see that, in a stationary sequence, it coincides with the tail dependence coefficient. (Sibuya in Ann Inst Stat Math 11:195-210, 1960; Joe in Multivariate models and dependence concepts. Monographs on statistics and applied probability, vol 73. Chapman and Hall, London, 1997), providing a new interpretation of the latter. This relationship will inspire a new estimator for., and its performance will be evaluated based on a simulation study. We illustrate with an application to financial series.

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