Pcapro: Difference between revisions
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imported>Chuck (→Inputs) |
imported>Chuck (→Inputs) |
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: 1) list of input variables: | : 1) list of input variables: | ||
:* '''loads''' = the model loadings | :* '''loads''' = the model loadings | ||
:* '''ssq''' = the model variance information | :* '''ssq''' = the model variance information | ||
Line 29: | Line 29: | ||
: 2) single model structure: | : 2) single model structure: | ||
:* '''pcamod''' = the structure variable that contains the PCA model | :* '''pcamod''' = the structure variable that contains the PCA model | ||
:* '''plots''' = optional variable, which suppresses the plots when set to 0 {default '''plots''' = 1}. | :* '''plots''' = optional variable, which suppresses the plots when set to 0 {default '''plots''' = 1}. |
Revision as of 14:52, 8 October 2008
Purpose
Project new data onto an existing principal components model.
Synopsis
- [scoresn,resn,tsqn] = pcapro(newdata,loads,ssq,reslm,tsqlm,plots)
- [scoresn,resn,tsqn] = pcapro(newdata,pcamod,plots)
Description
This function applies a previously-determined PCA model to a set of new data newdata. The PCA model can be input in one of two possible forms: 1) as a list of input variables, or 2) as a single model structure variable that had been previously returned by analysis or pca.
Inputs
- newdata = data to be applied to the existing PCA model
- The PCA model, which can be inputs in one of two forms, 1) as a list of input variables or 2) as a single model structure variable. These two cases are summarized below:
- 1) list of input variables:
- loads = the model loadings
- ssq = the model variance information
- reslm = the limit for Q residuals
- tsqlm = the limit for T2
- plots = optional variable, which suppresses plotting when set to 0 {default plots = 1}.
- WARNING: Scaling for newdata should be the same as original data used to create the PCA model!
- 2) single model structure:
- pcamod = the structure variable that contains the PCA model
- plots = optional variable, which suppresses the plots when set to 0 {default plots = 1}.
- NOTE: newdata will be preprocessed in PCAPRO using information stored in pcamod (pcamod.detail.preprocessing).
Outputs
- scoressn = the new scores
- resn = new residuals
- tsqn = new T2 values