/usr/include/shark/LinAlg/ModifiedKernelMatrix.h is in libshark-dev 3.0.1+ds1-2ubuntu1.
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/*!
*
*
* \brief Modified Kernel Gram matrix
*
*
* \par
*
*
*
* \author T. Glasmachers
* \date 2007-2012
*
*
* \par Copyright 1995-2015 Shark Development Team
*
* <BR><HR>
* This file is part of Shark.
* <http://image.diku.dk/shark/>
*
* Shark is free software: you can redistribute it and/or modify
* it under the terms of the GNU Lesser General Public License as published
* by the Free Software Foundation, either version 3 of the License, or
* (at your option) any later version.
*
* Shark is distributed in the hope that it will be useful,
* but WITHOUT ANY WARRANTY; without even the implied warranty of
* MERCHANTABILITY or FITNESS FOR A PARTICULAR PURPOSE. See the
* GNU Lesser General Public License for more details.
*
* You should have received a copy of the GNU Lesser General Public License
* along with Shark. If not, see <http://www.gnu.org/licenses/>.
*
*/
//===========================================================================
#ifndef SHARK_LINALG_MODIFIEDKERNELMATRIX_H
#define SHARK_LINALG_MODIFIEDKERNELMATRIX_H
#include <shark/Data/Dataset.h>
#include <shark/LinAlg/Base.h>
#include <vector>
#include <cmath>
namespace shark {
///
/// \brief Modified Kernel Gram matrix
///
/// \par
/// The ModifiedKernelMatrix represents the kernel matrix
/// multiplied element-wise with a factor depending on the
/// labels of the training examples. This is useful for the
/// MCMMR method (multi-class maximum margin regression).
template <class InputType, class CacheType>
class ModifiedKernelMatrix
{
private:
typedef KernelMatrix<InputType,CacheType> Matrix;
public:
typedef typename Matrix::QpFloatType QpFloatType;
/// Constructor
/// \param kernelfunction kernel function
/// \param data data to evaluate the kernel function
/// \param modifierEq multiplier for same-class labels
/// \param modifierNe multiplier for different-class kernels
ModifiedKernelMatrix(
AbstractKernelFunction<InputType> const& kernelfunction,
LabeledData<InputType, unsigned int> const& data,
QpFloatType modifierEq,
QpFloatType modifierNe
): m_matrix(kernelfunction,data.inputs())
, m_labels(data.numberOfElements())
, m_modifierEq(modifierEq)
, m_modifierNe(modifierNe){
for(std::size_t i = 0; i != m_labels.size(); ++i){
m_labels[i] = data.element(i).label;
}
}
/// return a single matrix entry
QpFloatType operator () (std::size_t i, std::size_t j) const
{ return entry(i, j); }
/// return a single matrix entry
QpFloatType entry(std::size_t i, std::size_t j) const
{
QpFloatType ret = m_matrix(i,j);
QpFloatType modifier = m_labels[i] == m_labels[j] ? m_modifierEq : m_modifierNe;
return modifier*ret;
}
/// \brief Computes the i-th row of the kernel matrix.
///
///The entries start,...,end of the i-th row are computed and stored in storage.
///There must be enough room for this operation preallocated.
void row(std::size_t i, std::size_t start,std::size_t end, QpFloatType* storage) const{
m_matrix.row(i,start,end,storage);
//apply modifiers
unsigned int labeli = m_labels[i];
for(std::size_t j = start; j < end; j++){
QpFloatType modifier = (labeli == m_labels[j]) ? m_modifierEq : m_modifierNe;
storage[j-start] *= modifier;
}
}
/// \brief Computes the kernel-matrix
template<class M>
void matrix(
blas::matrix_expression<M> & storage
) const{
m_matrix.matrix(storage);
for(std::size_t i = 0; i != size(); ++i){
unsigned int labeli = m_labels[i];
for(std::size_t j = 0; j != size(); ++j){
QpFloatType modifier = (labeli == m_labels[j]) ? m_modifierEq : m_modifierNe;
storage()(i,j) *= modifier;
}
}
}
/// swap two variables
void flipColumnsAndRows(std::size_t i, std::size_t j){
m_matrix.flipColumnsAndRows(i,j);
std::swap(m_labels[i],m_labels[j]);
}
/// return the size of the quadratic matrix
std::size_t size() const
{ return m_matrix.size(); }
/// query the kernel access counter
unsigned long long getAccessCount() const
{ return m_matrix.getAccessCount(); }
/// reset the kernel access counter
void resetAccessCount()
{ m_matrix.resetAccessCount(); }
protected:
/// Kernel matrix which computes the basic entries.
Matrix m_matrix;
std::vector<unsigned int> m_labels;
/// modifier in case the labels are equal
QpFloatType m_modifierEq;
/// modifier in case the labels differ
QpFloatType m_modifierNe;
};
}
#endif
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