DOI

The prominence of the Euler allocation rule (EAR) is rooted in the fact that it is the only return on risk-adjusted capital (RORAC) compatible capital allocation rule. When the total regulatory capital is set using the value-at-risk (VaR), the EAR becomes – using a statistical term – the quantile-regression (QR) function. Although the cumulative QR function (i.e., an integral of the QR function) has received considerable attention in the literature, a fully developed statistical inference theory for the QR function itself has been elusive. In the present paper, we develop such a theory based on an empirical QR estimator, for which we establish consistency, asymptotic normality, and standard error estimation. This makes the herein developed results readily applicable in practice, thus facilitating decision making within the RORAC paradigm, conditional mean risk sharing, and current regulatory frameworks.
Original languageEnglish
Pages (from-to)619 - 635
Number of pages17
JournalASTIN Bulletin
Volume53
Issue number3
Early online date2 May 2023
DOIs
StatePublished - 2 Sep 2023

    Research areas

  • Capital allocations, conditional mean risk sharing, quantile regression, order statistics, concomitants

    Scopus subject areas

  • Mathematics(all)

ID: 105354142