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Robustness of the inference procedures for the global minimum variance portfolio weights in a skew-normal model
Authors:Taras Bodnar
Institution:Department of Statistics, European University Viadrina, PO Box 1786, 15207 Frankfurt (Oder), Germany
Abstract:In this paper, we study the influence of skewness on the distributional properties of the estimated weights of optimal portfolios and on the corresponding inference procedures derived for the optimal portfolio weights assuming that the asset returns are normally distributed. It is shown that even a simple form of skewness in the asset returns can dramatically influence the performance of the test on the structure of the global minimum variance portfolio. The results obtained can be applied in the small sample case as well. Moreover, we introduce an estimation procedure for the parameters of the skew-normal distribution that is based on the modified method of moments. A goodness-of-fit test for the matrix variate closed skew-normal distribution has also been derived. In the empirical study, we apply our results to real data of several stocks included in the Dow Jones index.
Keywords:asset pricing  parameter uncertainty  matrix variate skew-normal distribution  global minimum variance portfolio  statistical inference procedures
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