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| The CANDISC Procedure |
| Task | Options |
| Specify Data Sets | DATA= |
| OUT= | |
| OUTSTAT= | |
| Control Canonical Variables | NCAN= |
| PREFIX= | |
| Determine Singularity | SINGULAR= |
| Control Displayed Correlations | BCORR |
| PCORR | |
| TCORR | |
| WCORR | |
| Control Displayed Covariances | BCOV |
| PCOV | |
| TCOV | |
| WCOV | |
| Control Displayed SSCP Matrices | BSSCP |
| PSSCP | |
| TSSCP | |
| WSSCP | |
| Suppress Output | NOPRINT |
| SHORT | |
| Miscellaneous | ALL |
| ANOVA | |
| DISTANCE | |
| SIMPLE | |
| STDMEAN |
Let S be the total-sample correlation matrix. If the R2 for predicting a quantitative variable in the VAR statement from the variables preceding it exceeds 1-p, S is considered singular. If S is singular, the probability levels for the multivariate test statistics and canonical correlations are adjusted for the number of variables with R2 exceeding 1-p.
If S is considered singular and the inverse of S (Squared Mahalanobis Distances) is required, a quasi-inverse is used instead. For details see the "Quasi-Inverse" section in Chapter 23, "The DISCRIM Procedure."
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