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mlpack::sparse_coding::SparseCoding< DictionaryInitializer >(3) | MLPACK | mlpack::sparse_coding::SparseCoding< DictionaryInitializer >(3) |
NAME¶
mlpack::sparse_coding::SparseCoding< DictionaryInitializer > - An implementation of Sparse Coding with Dictionary Learning that achieves sparsity via an l1-norm regularizer on the codes (LASSO) or an (l1+l2)-norm regularizer on the codes (the Elastic Net).SYNOPSIS¶
Public Member Functions¶
SparseCoding (const arma::mat &data, const size_t atoms, const double lambda1, const double lambda2=0)
Private Attributes¶
size_t atoms
Detailed Description¶
template<typename DictionaryInitializer = DataDependentRandomInitializer>class mlpack::sparse_coding::SparseCoding< DictionaryInitializer >¶
An implementation of Sparse Coding with Dictionary Learning that achieves sparsity via an l1-norm regularizer on the codes (LASSO) or an (l1+l2)-norm regularizer on the codes (the Elastic Net). Let d be the number of dimensions in the original space, m the number of training points, and k the number of atoms in the dictionary (the dimension of the learned feature space). The training data X is a d-by-m matrix where each column is a point and each row is a dimension. The dictionary D is a d-by-k matrix, and the sparse codes matrix Z is a k-by-m matrix. This program seeks to minimize the objective: subject to $ ||D_j||_2 <= 1 $ for $ 1 <= j <= k $ where typically $ lambda_1 > 0 $ and $ lambda_2 = 0 $. This problem is solved by an algorithm that alternates between a dictionary learning step and a sparse coding step. The dictionary learning step updates the dictionary D using a Newton method based on the Lagrange dual (see the paper below for details). The sparse coding step involves solving a large number of sparse linear regression problems; this can be done efficiently using LARS, an algorithm that can solve the LASSO or the Elastic Net (papers below). Here are those papers:@incollection{lee2007efficient, title = {Efficient sparse coding algorithms}, author = {Honglak Lee and Alexis Battle and Rajat Raina and Andrew Y. Ng}, booktitle = {Advances in Neural Information Processing Systems 19}, editor = {B. Sch publisher = {MIT Press}, address = {Cambridge, MA}, pages = {801--808}, year = {2007} }
@article{efron2004least, title={Least angle regression}, author={Efron, B. and Hastie, T. and Johnstone, I. and Tibshirani, R.}, journal={The Annals of statistics}, volume={32}, number={2}, pages={407--499}, year={2004}, publisher={Institute of Mathematical Statistics} }
@article{zou2005regularization, title={Regularization and variable selection via the elastic net}, author={Zou, H. and Hastie, T.}, journal={Journal of the Royal Statistical Society Series B}, volume={67}, number={2}, pages={301--320}, year={2005}, publisher={Royal Statistical Society} }Before the method is run, the dictionary is initialized using the DictionaryInitializationPolicy class. Possible choices include the RandomInitializer, which provides an entirely random dictionary, the DataDependentRandomInitializer, which provides a random dictionary based loosely on characteristics of the dataset, and the NothingInitializer, which does not initialize the dictionary -- instead, the user should set the dictionary using the Dictionary() mutator method. Template Parameters:
DictionaryInitializationPolicy The class to use to
initialize the dictionary; must have 'void Initialize(const arma::mat&
data, arma::mat& dictionary)' function.
Definition at line 119 of file sparse_coding.hpp.
Constructor & Destructor Documentation¶
template<typename DictionaryInitializer = DataDependentRandomInitializer> mlpack::sparse_coding::SparseCoding< DictionaryInitializer >:: SparseCoding (const arma::mat &data, const size_tatoms, const doublelambda1, const doublelambda2 = 0)¶
Set the parameters to SparseCoding. lambda2 defaults to 0. Parameters:data Data matrix
atoms Number of atoms in dictionary
lambda1 Regularization parameter for l1-norm penalty
lambda2 Regularization parameter for l2-norm penalty
Member Function Documentation¶
template<typename DictionaryInitializer = DataDependentRandomInitializer> const arma::mat& mlpack::sparse_coding::SparseCoding< DictionaryInitializer >::Codes () const [inline]¶
Access the sparse codes. Definition at line 187 of file sparse_coding.hpp. References mlpack::sparse_coding::SparseCoding< DictionaryInitializer >::codes.template<typename DictionaryInitializer = DataDependentRandomInitializer> arma::mat& mlpack::sparse_coding::SparseCoding< DictionaryInitializer >::Codes () [inline]¶
Modify the sparse codes. Definition at line 189 of file sparse_coding.hpp. References mlpack::sparse_coding::SparseCoding< DictionaryInitializer >::codes.template<typename DictionaryInitializer = DataDependentRandomInitializer> const arma::mat& mlpack::sparse_coding::SparseCoding< DictionaryInitializer >::Data () const [inline]¶
Access the data. Definition at line 179 of file sparse_coding.hpp. References mlpack::sparse_coding::SparseCoding< DictionaryInitializer >::data.template<typename DictionaryInitializer = DataDependentRandomInitializer> const arma::mat& mlpack::sparse_coding::SparseCoding< DictionaryInitializer >::Dictionary () const [inline]¶
Access the dictionary. Definition at line 182 of file sparse_coding.hpp. References mlpack::sparse_coding::SparseCoding< DictionaryInitializer >::dictionary.template<typename DictionaryInitializer = DataDependentRandomInitializer> arma::mat& mlpack::sparse_coding::SparseCoding< DictionaryInitializer >::Dictionary () [inline]¶
Modify the dictionary. Definition at line 184 of file sparse_coding.hpp. References mlpack::sparse_coding::SparseCoding< DictionaryInitializer >::dictionary.template<typename DictionaryInitializer = DataDependentRandomInitializer> void mlpack::sparse_coding::SparseCoding< DictionaryInitializer >::Encode (const size_tmaxIterations = 0, const doubleobjTolerance = 0.01, const doublenewtonTolerance = 1e-6)¶
Run Sparse Coding with Dictionary Learning. Parameters:maxIterations Maximum number of iterations to run
algorithm. If 0, the algorithm will run until convergence (or forever).
objTolerance Tolerance for objective function. When an iteration of the
algorithm produces an improvement smaller than this, the algorithm will
terminate.
newtonTolerance Tolerance for the Newton's method dictionary optimization
step.
template<typename DictionaryInitializer = DataDependentRandomInitializer> double mlpack::sparse_coding::SparseCoding< DictionaryInitializer >::Objective () const¶
Compute the objective function.template<typename DictionaryInitializer = DataDependentRandomInitializer> void mlpack::sparse_coding::SparseCoding< DictionaryInitializer >::OptimizeCode ()¶
Sparse code each point via LARS.template<typename DictionaryInitializer = DataDependentRandomInitializer> double mlpack::sparse_coding::SparseCoding< DictionaryInitializer >::OptimizeDictionary (const arma::uvec &adjacencies, const doublenewtonTolerance = 1e-6)¶
Learn dictionary via Newton method based on Lagrange dual. Parameters:adjacencies Indices of entries (unrolled column by
column) of the coding matrix Z that are non-zero (the adjacency matrix for the
bipartite graph of points and atoms).
newtonTolerance Tolerance of the Newton's method optimizer.
Returns:
the norm of the gradient of the Lagrange dual with
respect to the dual variables
template<typename DictionaryInitializer = DataDependentRandomInitializer> void mlpack::sparse_coding::SparseCoding< DictionaryInitializer >::ProjectDictionary ()¶
Project each atom of the dictionary back onto the unit ball, if necessary.template<typename DictionaryInitializer = DataDependentRandomInitializer> std::string mlpack::sparse_coding::SparseCoding< DictionaryInitializer >::ToString () const¶
Member Data Documentation¶
template<typename DictionaryInitializer = DataDependentRandomInitializer> size_t mlpack::sparse_coding::SparseCoding< DictionaryInitializer >::atoms [private]¶
Number of atoms. Definition at line 196 of file sparse_coding.hpp.template<typename DictionaryInitializer = DataDependentRandomInitializer> arma::mat mlpack::sparse_coding::SparseCoding< DictionaryInitializer >::codes [private]¶
Sparse codes (columns are points). Definition at line 205 of file sparse_coding.hpp. Referenced by mlpack::sparse_coding::SparseCoding< DictionaryInitializer >::Codes().template<typename DictionaryInitializer = DataDependentRandomInitializer> const arma::mat& mlpack::sparse_coding::SparseCoding< DictionaryInitializer >::data [private]¶
Data matrix (columns are points). Definition at line 199 of file sparse_coding.hpp. Referenced by mlpack::sparse_coding::SparseCoding< DictionaryInitializer >::Data().template<typename DictionaryInitializer = DataDependentRandomInitializer> arma::mat mlpack::sparse_coding::SparseCoding< DictionaryInitializer >::dictionary [private]¶
Dictionary (columns are atoms). Definition at line 202 of file sparse_coding.hpp. Referenced by mlpack::sparse_coding::SparseCoding< DictionaryInitializer >::Dictionary().template<typename DictionaryInitializer = DataDependentRandomInitializer> double mlpack::sparse_coding::SparseCoding< DictionaryInitializer >::lambda1 [private]¶
l1 regularization term. Definition at line 208 of file sparse_coding.hpp.template<typename DictionaryInitializer = DataDependentRandomInitializer> double mlpack::sparse_coding::SparseCoding< DictionaryInitializer >::lambda2 [private]¶
l2 regularization term. Definition at line 211 of file sparse_coding.hpp.Author¶
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