Sparse estimation within Pearson's system, with an application to financial market risk
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Published:2023-01-06
Issue:3
Volume:51
Page:800-823
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ISSN:0319-5724
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Container-title:Canadian Journal of Statistics
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language:en
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Short-container-title:Can J Statistics
Author:
Carey Michelle1,
Genest Christian2ORCID,
Ramsay James O.2
Affiliation:
1. School of Mathematics and Statistics University College Dublin Dublin Ireland
2. Department of Mathematics and Statistics McGill University Montréal Québec Canada
Abstract
AbstractPearson's system is a rich class of models that includes many classical univariate distributions. It comprises all continuous densities whose logarithmic derivative can be expressed as a ratio of quadratic polynomials governed by a vector of coefficients. The estimation of a Pearson density is challenging, as small variations in can induce wild changes in the shape of the corresponding density . The authors show how to estimate and effectively through a penalized likelihood procedure involving differential regularization. The approach combines a penalized regression method and a profiled estimation technique. Simulations and an illustration with S&P 500 data suggest that the proposed method can improve market risk assessment substantially through value‐at‐risk and expected shortfall estimates that outperform those currently used by financial institutions and regulators.
Funder
Canada Research Chairs
Natural Sciences and Engineering Research Council of Canada
Subject
Statistics, Probability and Uncertainty,Statistics and Probability
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