A FORTRAN program is presented to analyze the results of experimental designs. A Euclidean distance permutation procedure is used to evaluate residuals obtained from least sum of absolute deviations regression. Applications include completely randomized and randomized block configurations including one-way, factorial, split plot, and Latin square designs, with or without covariates.
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