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Efficient Mixture Design Fitting Quadratic Surface with Quantile Responses Using First-degree Polynomial
Authors:Lie-Jane Kao  Tai-Yuan Chen  Kuang-Chao Chang
Institution:1. Department of Finance and Banking, KaiNan University, Luzhu Shiang. Taoyuan, Taiwan;2. Department of Statistics, Fu Jen Catholic University, Hsin Chuang. Taipei, Taiwan
Abstract:This study considers efficient mixture designs for the approximation of the response surface of a quantile regression model, which is a second degree polynomial, by a first degree polynomial in the proportions of q components. Instead of least squares estimation in the traditional regression analysis, the objective function in quantile regression models is a weighted sum of absolute deviations and the least absolute deviations (LAD) estimation technique should be used (Bassett and Koenker, 1982 Bassett, G., Koenker, R. (1982). An empirical quantile function for linear models with i.i.d. errors. Journal of the American Statistical Association 77:407415.Taylor &; Francis Online], Web of Science ®] Google Scholar]; Koenker and Bassett, 1978 Koenker, R., Bassett, G. (1978). Regression quantiles. Econometrica 46(1):3350.Crossref], Web of Science ®] Google Scholar]). Therefore, the standard optimal mixture designs like the D-optimal or A-optimal mixture designs for the least squared estimation are not appropriate. This study explores mixture designs that minimize the bias between the approximated 1st-degree polynomial and a 2nd-degree polynomial response surfaces by the LAD estimation. In contrast to the standard optimal mixture designs for the least squared estimation, the efficient designs might contain elementary centroid design points of degrees higher than two. An example of a portfolio with five assets is given to illustrate the proposed efficient mixture designs in determining the marginal contribution of risks by individual assets in the portfolio.
Keywords:A-optimal  D-optimal  Elementary centroid design  Least absolute deviation  Mixture designs  Quantile regression  Response surface
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