International Journal for Re-Views in Empirical Economics (Nov 2019)

Semiparametric Value-At-Risk Estimation of Portfolios. A replication study of Dias (Journal of Banking & Finance, 2014)

  • Jiahua Xu

DOI
https://doi.org/10.18718/81781.15
Journal volume & issue
Vol. 3, no. 2019-6
pp. 1 – 20

Abstract

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This paper aims to replicate the semiparametric Value-At-Risk model by Dias (2014) and to test its legitimacy. The study confirms the superiority of semiparametric estimation over classical methods such as mixture normal and Student-t approximations in estimating tail distribution of portfolios, which can be credited to the model’s uniqueness in combining strengths of both extreme value theory (EVT) models and other multivariate models. The author however discovers, in one instance, the infeasibility of the Dias model, and suggests a modification.

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