Statistically (optimal) estimators of semivariance: A correction of Josephy-Aczel’s proof Cover Image

Optymalne estymatory semiwariancji: korekta dowodu Josephy’ego-Aczela
Statistically (optimal) estimators of semivariance: A correction of Josephy-Aczel’s proof

Author(s): Karlheinz Fleischer, Bernhard Nietert
Subject(s): Business Economy / Management
Published by: Wydawnictwo Uniwersytetu Ekonomicznego we Wrocławiu
Keywords: risk analysis; semivariance; statistical estimation;

Summary/Abstract: Semivariance is an intuitive risk measure because it concentrates on the shortfall below a target and not on total variation. To successfully use semivariance in practice, however, a statistical estimator of semivariance is needed; Josephy and Aczel provide such an estimator. Unfortunately, they have not correctly proven asymptotic unbiasedness and mean squared error consistency of their estimator since their proof contains a mistake. This paper corrects the computational mistake in Josephy-Aczel’s original proof and, that way, allows researchers and practitioners in the field of downside portfolio selection, hedging, downside asset pricing, risk measurement in a regulatory context, and performance measurement to work with a meaningfully specified downside measure.

  • Issue Year: 23/2019
  • Issue No: 17
  • Page Range: 9-30
  • Page Count: 22
  • Language: English
Toggle Accessibility Mode