2010
DOI: 10.1080/14697680902814225
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Portfolio optimization for studenttand skewedtreturns

Abstract: It is well-established that equity returns are not Normally distributed, but what should the portfolio manager do about this, and is it worth the effort? It is now feasible to employ better multivariate distribution families that capture heavy tails and skewness in the data; we argue that among the best are the Student t and skewed t distributions. These can be efficiently fitted to data, and show a much better fit to real returns than the Normal distribution. By examining efficient frontiers computed using di… Show more

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Cited by 56 publications
(28 citation statements)
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References 7 publications
(3 reference statements)
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“…This property is important for portfolio construction, as demonstrated in Mencia and Sentana (2009) and Hu and Kercheval (2010) in the context of the GH asymmetric t distribution. It implies that all of the portfolio return characteristics are directly deduced from those of the components.…”
Section: E Jondeau / Computational Statistics and Data Analysis ( ) -mentioning
confidence: 95%
See 1 more Smart Citation
“…This property is important for portfolio construction, as demonstrated in Mencia and Sentana (2009) and Hu and Kercheval (2010) in the context of the GH asymmetric t distribution. It implies that all of the portfolio return characteristics are directly deduced from those of the components.…”
Section: E Jondeau / Computational Statistics and Data Analysis ( ) -mentioning
confidence: 95%
“…Most of the multivariate distributions used for modeling financial returns are unable to produce reliable estimates of the left-tail and right-tail dependence found in the actual joint distribution. For instance, the asymmetric t distribution (Mencia and Sentana, 2009;Hu and Kercheval, 2010) implies full dependence on one side of the distribution and full independence on the other side. By contrast, the skewed t distribution (Jondeau and Rockinger, 2009) captures the asymmetry in the exceedance correlations but does not generate asymmetric tail dependence.…”
Section: Introductionmentioning
confidence: 99%
“…Note that compared to normal distributions, t-distributions have been widely used to model return of financial assets whose distributions are usually fat-tailed. We refer the readers to Hu and Kercheval [23] and Platen and Sidorowicz [37] for recent developments and empirical evidences.…”
Section: Numerical Testsmentioning
confidence: 99%
“…(These will be defined later.) See Hu and Kercheval (2007, 2008, 2010; Hu (2005); McNeil et al (2005); Aas and Hobaek Haff (2006); Keel and Geering (2006).…”
mentioning
confidence: 99%