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mlpack::nca::SoftmaxErrorFunction< MetricType >(3) | MLPACK | mlpack::nca::SoftmaxErrorFunction< MetricType >(3) |
NAME¶
mlpack::nca::SoftmaxErrorFunction< MetricType > - The 'softmax' stochastic neighbor assignment probability function.SYNOPSIS¶
Public Member Functions¶
SoftmaxErrorFunction (const arma::mat &dataset, const arma::Col< size_t > & labels, MetricType metric=MetricType())
Private Member Functions¶
void Precalculate (const arma::mat &coordinates)
Private Attributes¶
const arma::mat & dataset
Detailed Description¶
template<typename MetricType = metric::SquaredEuclideanDistance>class mlpack::nca::SoftmaxErrorFunction< MetricType >¶
The 'softmax' stochastic neighbor assignment probability function. The actual function is p_ij = (exp(-|| A x_i - A x_j || ^ 2)) / (sum_{k != i} (exp(-|| A x_i - A x_k || ^ 2))) where x_n represents a point and A is the current scaling matrix. This class is more flexible than the original paper, allowing an arbitrary metric function to be used in place of || A x_i - A x_j ||^2, meaning that the squared Euclidean distance is not the only allowed metric for NCA. However, that is probably the best way to use this class. In addition to the standard Evaluate() and Gradient() functions which MLPACK optimizers use, overloads of Evaluate() and Gradient() are given which only operate on one point in the dataset. This is useful for optimizers like stochastic gradient descent (see mlpack::optimization::SGD). Definition at line 52 of file nca_softmax_error_function.hpp.Constructor & Destructor Documentation¶
template<typename MetricType = metric::SquaredEuclideanDistance> mlpack::nca::SoftmaxErrorFunction< MetricType >:: SoftmaxErrorFunction (const arma::mat &dataset, const arma::Col< size_t > &labels, MetricTypemetric = MetricType())¶
Initialize with the given kernel; useful when the kernel has some state to store, which is set elsewhere. If no kernel is given, an empty kernel is used; this way, you can call the constructor with no arguments. A reference to the dataset we will be optimizing over is also required. Parameters:dataset Matrix containing the dataset.
labels Vector of class labels for each point in the dataset.
kernel Instantiated kernel (optional).
Member Function Documentation¶
template<typename MetricType = metric::SquaredEuclideanDistance> double mlpack::nca::SoftmaxErrorFunction< MetricType >::Evaluate (const arma::mat &covariance)¶
Evaluate the softmax function for the given covariance matrix. This is the non-separable implementation, where the objective function is not decomposed into the sum of several objective functions. Parameters:covariance Covariance matrix of Mahalanobis
distance.
template<typename MetricType = metric::SquaredEuclideanDistance> double mlpack::nca::SoftmaxErrorFunction< MetricType >::Evaluate (const arma::mat &covariance, const size_ti)¶
Evaluate the softmax objective function for the given covariance matrix on only one point of the dataset. This is the separable implementation, where the objective function is decomposed into the sum of many objective functions, and here, only one of those constituent objective functions is returned. Parameters:covariance Covariance matrix of Mahalanobis
distance.
i Index of point to use for objective function.
template<typename MetricType = metric::SquaredEuclideanDistance> const arma::mat mlpack::nca::SoftmaxErrorFunction< MetricType >::GetInitialPoint () const¶
Get the initial point.template<typename MetricType = metric::SquaredEuclideanDistance> void mlpack::nca::SoftmaxErrorFunction< MetricType >::Gradient (const arma::mat &covariance, arma::mat &gradient)¶
Evaluate the gradient of the softmax function for the given covariance matrix. This is the non-separable implementation, where the objective function is not decomposed into the sum of several objective functions. Parameters:covariance Covariance matrix of Mahalanobis
distance.
gradient Matrix to store the calculated gradient in.
template<typename MetricType = metric::SquaredEuclideanDistance> void mlpack::nca::SoftmaxErrorFunction< MetricType >::Gradient (const arma::mat &covariance, const size_ti, arma::mat &gradient)¶
Evaluate the gradient of the softmax function for the given covariance matrix on only one point of the dataset. This is the separable implementation, where the objective function is decomposed into the sum of many objective functions, and here, only one of those constituent objective functions is returned. Parameters:covariance Covariance matrix of Mahalanobis
distance.
i Index of point to use for objective function.
gradient Matrix to store the calculated gradient in.
template<typename MetricType = metric::SquaredEuclideanDistance> size_t mlpack::nca::SoftmaxErrorFunction< MetricType >::NumFunctions () const [inline]¶
Get the number of functions the objective function can be decomposed into. This is just the number of points in the dataset. Definition at line 124 of file nca_softmax_error_function.hpp.template<typename MetricType = metric::SquaredEuclideanDistance> void mlpack::nca::SoftmaxErrorFunction< MetricType >::Precalculate (const arma::mat &coordinates) [private]¶
Precalculate the denominators and numerators that will make up the p_ij, but only if the coordinates matrix is different than the last coordinates the Precalculate() method was run with. This method is only called by the non-separable Evaluate() and Gradient(). This will update last_coordinates_ and stretched_dataset_, and also calculate the p_i and denominators_ which are used in the calculation of p_i or p_ij. The calculation will be O((n * (n + 1)) / 2), which is not great. Parameters:coordinates Coordinates matrix to use for
precalculation.
template<typename MetricType = metric::SquaredEuclideanDistance> std::string mlpack::nca::SoftmaxErrorFunction< MetricType >::ToString () const¶
Member Data Documentation¶
template<typename MetricType = metric::SquaredEuclideanDistance> const arma::mat& mlpack::nca::SoftmaxErrorFunction< MetricType >::dataset [private]¶
The dataset. Definition at line 131 of file nca_softmax_error_function.hpp.template<typename MetricType = metric::SquaredEuclideanDistance> arma::vec mlpack::nca::SoftmaxErrorFunction< MetricType >::denominators [private]¶
Holds denominators for calculation of p_ij, for the non-separable Evaluate() and Gradient(). Definition at line 146 of file nca_softmax_error_function.hpp.template<typename MetricType = metric::SquaredEuclideanDistance> const arma::Col<size_t>& mlpack::nca::SoftmaxErrorFunction< MetricType >::labels [private]¶
Labels for each point in the dataset. Definition at line 133 of file nca_softmax_error_function.hpp.template<typename MetricType = metric::SquaredEuclideanDistance> arma::mat mlpack::nca::SoftmaxErrorFunction< MetricType >::lastCoordinates [private]¶
Last coordinates. Used for the non-separable Evaluate() and Gradient(). Definition at line 139 of file nca_softmax_error_function.hpp.template<typename MetricType = metric::SquaredEuclideanDistance> MetricType mlpack::nca::SoftmaxErrorFunction< MetricType >::metric [private]¶
The instantiated metric. Definition at line 136 of file nca_softmax_error_function.hpp.template<typename MetricType = metric::SquaredEuclideanDistance> arma::vec mlpack::nca::SoftmaxErrorFunction< MetricType >::p [private]¶
Holds calculated p_i, for the non-separable Evaluate() and Gradient(). Definition at line 143 of file nca_softmax_error_function.hpp.template<typename MetricType = metric::SquaredEuclideanDistance> bool mlpack::nca::SoftmaxErrorFunction< MetricType >::precalculated [private]¶
False if nothing has ever been precalculated (only at construction time). Definition at line 149 of file nca_softmax_error_function.hpp.template<typename MetricType = metric::SquaredEuclideanDistance> arma::mat mlpack::nca::SoftmaxErrorFunction< MetricType >::stretchedDataset [private]¶
Stretched dataset. Kept internal to avoid memory reallocations. Definition at line 141 of file nca_softmax_error_function.hpp.Author¶
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