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mlpack::pca::PCA(3) | MLPACK | mlpack::pca::PCA(3) |
NAME¶
mlpack::pca::PCA - This class implements principal components analysis ( PCA).SYNOPSIS¶
Public Member Functions¶
PCA (const bool scaleData=false)
Private Attributes¶
bool scaleData
Detailed Description¶
This class implements principal components analysis ( PCA). This is a common, widely-used technique that is often used for either dimensionality reduction or transforming data into a better basis. Further information on PCA can be found in almost any statistics or machine learning textbook, and all over the internet. Definition at line 38 of file pca.hpp.Constructor & Destructor Documentation¶
mlpack::pca::PCA::PCA (const boolscaleData = false)¶
Create the PCA object, specifying if the data should be scaled in each dimension by standard deviation when PCA is performed. Parameters:scaleData Whether or not to scale the data.
Member Function Documentation¶
void mlpack::pca::PCA::Apply (const arma::mat &data, arma::mat &transformedData, arma::vec &eigval, arma::mat &eigvec) const¶
Apply Principal Component Analysis to the provided data set. It is safe to pass the same matrix reference for both data and transformedData. Parameters:data Data matrix.
transformedData Matrix to put results of PCA into.
eigval Vector to put eigenvalues into.
eigvec Matrix to put eigenvectors (loadings) into.
Referenced by Apply().
void mlpack::pca::PCA::Apply (const arma::mat &data, arma::mat &transformedData, arma::vec &eigVal) const¶
Apply Principal Component Analysis to the provided data set. It is safe to pass the same matrix reference for both data and transformedData. Parameters:data Data matrix.
transformedData Matrix to store results of PCA in.
eigval Vector to put eigenvalues into.
double mlpack::pca::PCA::Apply (arma::mat &data, const size_tnewDimension) const¶
Use PCA for dimensionality reduction on the given dataset. This will save the newDimension largest principal components of the data and remove the rest. The parameter returned is the amount of variance of the data that is retained; this is a value between 0 and 1. For instance, a value of 0.9 indicates that 90% of the variance present in the data was retained. Parameters:data Data matrix.
newDimension New dimension of the data.
Returns:
Amount of the variance of the data retained (between 0
and 1).
double mlpack::pca::PCA::Apply (arma::mat &data, const intnewDimension) const [inline]¶
This overload is here to make sure int gets casted right to size_t. Definition at line 89 of file pca.hpp. References Apply().double mlpack::pca::PCA::Apply (arma::mat &data, const doublevarRetained) const¶
Use PCA for dimensionality reduction on the given dataset. This will save as many dimensions as necessary to retain at least the given amount of variance (specified by parameter varRetained). The amount should be between 0 and 1; if the amount is 0, then only 1 dimension will be retained. If the amount is 1, then all dimensions will be retained. The method returns the actual amount of variance retained, which will always be greater than or equal to the varRetained parameter. Parameters:data Data matrix.
varRetained Lower bound on amount of variance to retain; should be
between 0 and 1.
Returns:
Actual amount of variance retained (between 0 and
1).
bool mlpack::pca::PCA::ScaleData () const [inline]¶
Get whether or not this PCA object will scale (by standard deviation) the data when PCA is performed. Definition at line 113 of file pca.hpp. References scaleData.bool& mlpack::pca::PCA::ScaleData () [inline]¶
Modify whether or not this PCA object will scale (by standard deviation) the data when PCA is performed. Definition at line 116 of file pca.hpp. References scaleData.std::string mlpack::pca::PCA::ToString () const¶
Member Data Documentation¶
bool mlpack::pca::PCA::scaleData [private]¶
Whether or not the data will be scaled by standard deviation when PCA is performed. Definition at line 124 of file pca.hpp. Referenced by ScaleData().Author¶
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