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A bivariate infinitely divisible law for modeling the magnitude and duration of monotone periods of log‐returns

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  • Wagner Barreto‐Souza
  • Rodrigo B. Silva

Abstract

The focus of this article is modeling the magnitude and duration of monotone periods of log‐returns. For this, we propose a new bivariate law assuming that the probabilistic framework over the magnitude and duration is based on the joint distribution of (X,N), where N is geometric distributed and X is the sum of an identically distributed sequence of inverse‐Gaussian random variables independent of N. In this sense, X and N represent the magnitude and duration of the log‐returns, respectively, and the magnitude comes from an infinite mixture of inverse‐Gaussian distributions. This new model is named bivariate inverse‐Gaussian geometric ( BIGG in short) law. We provide statistical properties of the BIGG model and explore stochastic representations. In particular, we show that the BIGG is infinitely divisible, and with this, an induced Lévy process is proposed and studied in some detail. Estimation of the parameters is performed via maximum likelihood, and Fisher's information matrix is obtained. An empirical illustration to the log‐returns of Tyco International stock demonstrates the superior performance of the BIGG law compared to an existing model. We expect that the proposed law can be considered as a powerful tool in the modeling of log‐returns and other episodes analyses such as water resources management, risk assessment, and civil engineering projects.

Suggested Citation

  • Wagner Barreto‐Souza & Rodrigo B. Silva, 2019. "A bivariate infinitely divisible law for modeling the magnitude and duration of monotone periods of log‐returns," Statistica Neerlandica, Netherlands Society for Statistics and Operations Research, vol. 73(2), pages 211-233, May.
  • Handle: RePEc:bla:stanee:v:73:y:2019:i:2:p:211-233
    DOI: 10.1111/stan.12166
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    Cited by:

    1. Francesco Zuniga & Tomasz J. Kozubowski & Anna K. Panorska, 2021. "A new trivariate model for stochastic episodes," Journal of Statistical Distributions and Applications, Springer, vol. 8(1), pages 1-21, December.
    2. Charles K. Amponsah & Tomasz J. Kozubowski & Anna K. Panorska, 2021. "A general stochastic model for bivariate episodes driven by a gamma sequence," Journal of Statistical Distributions and Applications, Springer, vol. 8(1), pages 1-31, December.

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