Likelihood and Quadratic Distance Methods for the Generalized Asymmetric Laplace Distribution for Financial Data

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DOI: 10.4236/ojs.2017.72025    1,421 Downloads   2,776 Views  Citations
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ABSTRACT

Maximum likelihood (ML) estimation for the generalized asymmetric Laplace (GAL) distribution also known as Variance gamma using simplex direct search algorithms is investigated. In this paper, we use numerical direct search techniques for maximizing the log-likelihood to obtain ML estimators instead of using the traditional EM algorithm. The density function of the GAL is only continuous but not differentiable with respect to the parameters and the appearance of the Bessel function in the density make it difficult to obtain the asymptotic covariance matrix for the entire GAL family. Using M-estimation theory, the properties of the ML estimators are investigated in this paper. The ML estimators are shown to be consistent for the GAL family and their asymptotic normality can only be guaranteed for the asymmetric Laplace (AL) family. The asymptotic covariance matrix is obtained for the AL family and it completes the results obtained previously in the literature. For the general GAL model, alternative methods of inferences based on quadratic distances (QD) are proposed. The QD methods appear to be overall more efficient than likelihood methods infinite samples using sample sizes n ≤5000 and the range of parameters often encountered for financial data. The proposed methods only require that the moment generating function of the parametric model exists and has a closed form expression and can be used for other models.

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Luong, A. (2017) Likelihood and Quadratic Distance Methods for the Generalized Asymmetric Laplace Distribution for Financial Data. Open Journal of Statistics, 7, 347-368. doi: 10.4236/ojs.2017.72025.

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