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Reverses Principal Component Analysis (PCA) process. Can be used to transform data back to original feature space.
| Name | Type | Description | |
|---|---|---|---|
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inTransformedMatrix | Matrix | Data that was transformed earlier. |
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inPCAModel | PCAModel | PCA model used to create inTransformedMatrix. |
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outMatrix | Matrix | inTransformedMatrix transformed back to its original feature space. |
Errors
This filter can throw an exception to report error. Read how to deal with errors here: Error Handling
| Error type | Description |
|---|---|
| DomainError | Feature vector of inPCAModel and Transformed Data matrices dimensions do not correspond to each other in ReversePCATransform. |
| DomainError | Malformed inPCAModel - uneven vector sizes in ReversePCATransform. |
| DomainError | Malformed inPCAModel - MeanVector is not row-vector in ReversePCATransform. |
| DomainError | Malformed inPCAModel - StandardDeviationVector is not row-vector in ReversePCATransform. |
| DomainError | inMeanVector and inStandardDeviationVector have incorrect size for inTransformedMatrix provided in ReversePCATransform. |
Complexity Level
This filter is available on Basic Complexity Level.


