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The distribution of the square sum of Dirichlet random variables and a table with quantiles of Greenwoods statistic

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 Added by Thomas Royen
 Publication date 2010
and research's language is English
 Authors Thomas Royen




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The exact distribution of the square sum of Dirichlet random variables is given by two different univariate integral representations. Alternatively, three representations by orthogonal series with Jacobi or Legendre polynomials are derived. As a special case the distribution of the square sum of spacings - also called Greenwoods statistic - is obtained. Nine quantiles of this statistic are tabulated with eight digits where the number of squares ranges from 10 to 100.



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