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    Stagewise Multivariate Linear Regression Using Spss or BMDP
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    Abstract:
    The multivariate test statistic for multivariate regression may be computed using BMDP6M or SPSS CANCORR. A stagewise multivariate regression procedure is described which is equivalent to the multivariate extension of testing the semi-partial correlation coefficient.
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