Research Article Open Access

Log-Moment Estimators for the Generalized Linnik and Mittag-Leffler Distributions with Applications to Financial Modeling

Dexter O. Cahoy1 and Wojbor A. Woyczyński2
  • 1 University of Houston-Downtown, United States
  • 2 Case Western Reserve University, United States

Abstract

We propose formal estimation procedures for the parameters of the generalized, heavy-tailed three-parameter Linnik gL(α, µ, δ) and Mittag-Leffler gML(α, µ, δ) distributions. The paper also aims to provide guidance about the different inference procedures for the different two-parameter Linnik and Mittag-Leffler distributions in the current literature. The estimators are derived from the moments of the log-transformed random variables and are shown to be asymptotically unbiased. The estimation algorithms are computationally efficient and the proposed procedures are tested using the daily S&P 500 and Dow Jones index data. The results show that the two-parameter Linnik and Mittag-Leffler models are not flexible enough to accurately model the current stock market data.

Journal of Mathematics and Statistics
Volume 14 No. 1, 2018, 156-166

DOI: https://doi.org/10.3844/jmssp.2018.156.166

Submitted On: 15 May 2018 Published On: 1 August 2018

How to Cite: Cahoy, D. O. & Woyczyński, W. A. (2018). Log-Moment Estimators for the Generalized Linnik and Mittag-Leffler Distributions with Applications to Financial Modeling. Journal of Mathematics and Statistics, 14(1), 156-166. https://doi.org/10.3844/jmssp.2018.156.166

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Keywords

  • Linnik
  • Mittag-Leffler
  • Heavy-Tailed
  • Dow Jones
  • S&P500
  • Finance
  • Parameter Estimation