Quantile-Based Inference for Tempered Stable Distributions

Quantile-Based Inference for Tempered Stable Distributions
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Total Pages : 25
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ISBN-10 : OCLC:1306258598
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Book Synopsis Quantile-Based Inference for Tempered Stable Distributions by : Hasan Fallahgoul

Download or read book Quantile-Based Inference for Tempered Stable Distributions written by Hasan Fallahgoul and published by . This book was released on 2016 with total page 25 pages. Available in PDF, EPUB and Kindle. Book excerpt: If the closed-form formula for the probability density function is not available, implementing the maximum likelihood estimation is challenging. We introduce a simple, fast, and accurate way for the estimation of numerous distributions that belong to the class of tempered stable probability distributions. Estimation is based on the Method of Simulated Quantiles (Dominicy and Veredas (2013)). MSQ consists of matching empirical and theoretical functions of quantiles that are informative about the parameters of interest. In the Monte Carlo study we show that MSQ is significantly faster than Maximum Likelihood and the estimates are almost as precise as MLE. A Value at Risk study using 13 years of daily returns from 21 world-wide market indexes shows that MSQ estimates provide as good risk assessments as with MLE.


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