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Bootstrap smoothed

The smoothed bootstrap has been proposed to deal with the discreteness of the empirical distribution function (F) when there are small sample sizes (A < 15). For this approach one must smooth the empirical distribution function and then bootstrap samples are drawn from the smoothed empirical distribution function, for example, from a kernel density estimate. However, it is evident that the proper selection of the smoothing parameter (h) is important so that oversmoothing or undersmoothing does not occur. It is difficult to know the most appropriate value for h and once the value for h is assigned it influences the variability and thus makes characterizing the variability terms of the model impossible. There are few studies where the smoothed bootstrap has been applied (21,27,28). In one such study the improvement in the correlation coefficient when compared to the standard non-parametric bootstrap was modest (21). Therefore, the value and behavior of the smoothed bootstrap are not clear. [Pg.407]

For the smoothed bootstrap the shape of the distribution is not assumed. However, if one assumes F to be continuous and smooth, then the next step is to assume that it has a parametric form. If one assumes that F has a parametric form such as the Gaussian distribution, then the appropriate estimator for F would be a Gaussian distribution. [Pg.407]


See other pages where Bootstrap smoothed is mentioned: [Pg.151]    [Pg.47]    [Pg.403]    [Pg.407]    [Pg.363]    [Pg.301]    [Pg.41]    [Pg.1094]    [Pg.27]    [Pg.395]   
See also in sourсe #XX -- [ Pg.407 ]




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