A Program for Least Median of Squares Regression and Robust ...
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A Program for Least Median of Squares Regression and Robust ...
the data being outliers before they fail to give results that describe the bulk of the data. A complete ... formatted disk and self-addressed mailer to Gerard E, Dallal at USDA HNRC. .... best solution obtained from these randomly selected subsets.