4.6 Article

Exact confidence sets and goodness-of-fit methods for stable distributions

Journal

JOURNAL OF ECONOMETRICS
Volume 181, Issue 1, Pages 3-14

Publisher

ELSEVIER SCIENCE SA
DOI: 10.1016/j.jeconom.2014.02.003

Keywords

Stable distribution; Skewness; Asymmetry; Exact test; Monte Carlo test; Specification test; Goodness-of-fit; Tail parameter; Electricity price

Funding

  1. William Dow Chair in Political Economy (McGill University)
  2. Bank of Canada (Research Fellowship)
  3. Toulouse School of Economics (Pierre-de-Fermat Chair of excellence)
  4. Universidad Carlos III de Madrid (Banco Santander de Madrid Chair of excellence)
  5. Chaire RBC en innovations financieres (Universite Laval)
  6. Social Sciences and Humanities Research Council of Canada
  7. Natural Sciences and Engineering Research Council of Canada
  8. Fonds de recherche sur la societe et la culture (Quebec)
  9. Institut de Finance mathematique de Montreal (IFM2)
  10. Guggenheim Fellowship
  11. Konrad-Adenauer Fellowship (Alexander-von-Humboldt Foundation, Germany)
  12. Canadian Network of Centres of Excellence

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Usual inference methods for stable distributions are typically based on limit distributions. But asymptotic approximations can easily be unreliable in such cases, for standard regularity conditions may not apply or may hold only weakly. This paper proposes finite-sample tests and confidence sets for tail thickness and asymmetry parameters (alpha and beta) of stable distributions. The confidence sets are built by inverting exact goodness-of-fit tests for hypotheses which assign specific values to these parameters. We propose extensions of the Kolmogorov-Smirnov, Shapiro-Wilk and Filliben criteria, as well as the quantile-based statistics proposed by McCulloch (1986) in order to better capture tail behavior. The suggested criteria compare empirical goodness-of-fit or quantile-based measures with their hypothesized values. Since the distributions involved are quite complex and non-standard, the relevant hypothetical measures are approximated by simulation, and p-values are obtained using Monte Carlo (MC) test techniques. The properties of the proposed procedures are investigated by simulation. In contrast with conventional wisdom, we find reliable results with sample sizes as small as 25. The proposed methodology is applied to daily electricity price data in the US over the period 2001-2006. The results show clearly that heavy kurtosis and asymmetry are prevalent in these series. (C) 2014 Published by Elsevier B.V.

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