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/* */
/* Copyright 2008-2009 by Ullrich Koethe and Rahul Nair */
/* */
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#ifndef VIGRA_RF_PREPROCESSING_HXX
#define VIGRA_RF_PREPROCESSING_HXX
#include <limits>
#include "rf_common.hxx"
namespace vigra
{
/** Class used while preprocessing (currently used only during learn)
*
* This class is internally used by the Random Forest learn function.
* Different split functors may need to process the data in different manners
* (i.e., regression labels that should not be touched and classification
* labels that must be converted into a integral format)
*
* This Class only exists in specialized versions, where the Tag class is
* fixed.
*
* The Tag class is determined by Splitfunctor::Preprocessor_t . Currently
* it can either be ClassificationTag or RegressionTag. look At the
* RegressionTag specialisation for the basic interface if you ever happen
* to care.... - or need some sort of vague new preprocessor.
* new preprocessor ( Soft labels or whatever)
*/
template<class Tag, class LabelType, class T1, class C1, class T2, class C2>
class Processor;
namespace detail
{
/* Common helper function used in all Processors.
* This function analyses the options struct and calculates the real
* values needed for the current problem (data)
*/
template<class T>
void fill_external_parameters(RandomForestOptions const & options,
ProblemSpec<T> & ext_param)
{
// set correct value for mtry
switch(options.mtry_switch_)
{
case RF_SQRT:
ext_param.actual_mtry_ =
int(std::floor(
std::sqrt(double(ext_param.column_count_))
+ 0.5));
break;
case RF_LOG:
// this is in Breimans original paper
ext_param.actual_mtry_ =
int(1+(std::log(double(ext_param.column_count_))
/std::log(2.0)));
break;
case RF_FUNCTION:
ext_param.actual_mtry_ =
options.mtry_func_(ext_param.column_count_);
break;
case RF_ALL:
ext_param.actual_mtry_ = ext_param.column_count_;
break;
default:
ext_param.actual_mtry_ =
options.mtry_;
}
// set correct value for msample
switch(options.training_set_calc_switch_)
{
case RF_CONST:
ext_param.actual_msample_ =
options.training_set_size_;
break;
case RF_PROPORTIONAL:
ext_param.actual_msample_ =
(int)std::ceil( options.training_set_proportion_ *
ext_param.row_count_);
break;
case RF_FUNCTION:
ext_param.actual_msample_ =
options.training_set_func_(ext_param.row_count_);
break;
default:
vigra_precondition(1!= 1, "unexpected error");
}
}
/* Returns true if MultiArray contains NaNs
*/
template<unsigned int N, class T, class C>
bool contains_nan(MultiArrayView<N, T, C> const & in)
{
for(int ii = 0; ii < in.size(); ++ii)
if(in[ii] != in[ii])
return true;
return false;
}
/* Returns true if MultiArray contains Infs
*/
template<unsigned int N, class T, class C>
bool contains_inf(MultiArrayView<N, T, C> const & in)
{
if(!std::numeric_limits<T>::has_infinity)
return false;
for(int ii = 0; ii < in.size(); ++ii)
if(in[ii] == std::numeric_limits<T>::infinity())
return true;
return false;
}
} // namespace detail
/** Preprocessor used during Classification
*
* This class converts the labels int Integral labels which are used by the
* standard split functor to address memory in the node objects.
*/
template<class LabelType, class T1, class C1, class T2, class C2>
class Processor<ClassificationTag, LabelType, T1, C1, T2, C2>
{
public:
typedef Int32 LabelInt;
typedef MultiArrayView<2, T1, C1> Feature_t;
typedef MultiArray<2, T1> FeatureWithMemory_t;
typedef MultiArrayView<2,LabelInt> Label_t;
MultiArrayView<2, T1, C1>const & features_;
MultiArray<2, LabelInt> intLabels_;
MultiArrayView<2, LabelInt> strata_;
template<class T>
Processor(MultiArrayView<2, T1, C1>const & features,
MultiArrayView<2, T2, C2>const & response,
RandomForestOptions &options,
ProblemSpec<T> &ext_param)
:
features_( features) // do not touch the features.
{
vigra_precondition(!detail::contains_nan(features), "RandomForest(): Feature matrix "
"contains NaNs");
vigra_precondition(!detail::contains_nan(response), "RandomForest(): Response "
"contains NaNs");
vigra_precondition(!detail::contains_inf(features), "RandomForest(): Feature matrix "
"contains inf");
vigra_precondition(!detail::contains_inf(response), "RandomForest(): Response "
"contains inf");
// set some of the problem specific parameters
ext_param.column_count_ = features.shape(1);
ext_param.row_count_ = features.shape(0);
ext_param.problem_type_ = CLASSIFICATION;
ext_param.used_ = true;
intLabels_.reshape(response.shape());
//get the class labels
if(ext_param.class_count_ == 0)
{
// fill up a map with the current labels and then create the
// integral labels.
std::set<T2> labelToInt;
for(MultiArrayIndex k = 0; k < features.shape(0); ++k)
labelToInt.insert(response(k,0));
std::vector<T2> tmp_(labelToInt.begin(), labelToInt.end());
ext_param.classes_(tmp_.begin(), tmp_.end());
}
for(MultiArrayIndex k = 0; k < features.shape(0); ++k)
{
if(std::find(ext_param.classes.begin(), ext_param.classes.end(), response(k,0)) == ext_param.classes.end())
{
throw std::runtime_error("RandomForest(): invalid label in training data.");
}
else
intLabels_(k, 0) = std::find(ext_param.classes.begin(), ext_param.classes.end(), response(k,0))
- ext_param.classes.begin();
}
// set class weights
if(ext_param.class_weights_.size() == 0)
{
ArrayVector<T2>
tmp((std::size_t)ext_param.class_count_,
NumericTraits<T2>::one());
ext_param.class_weights(tmp.begin(), tmp.end());
}
// set mtry and msample
detail::fill_external_parameters(options, ext_param);
// set strata
strata_ = intLabels_;
}
/** Access the processed features
*/
MultiArrayView<2, T1, C1>const & features()
{
return features_;
}
/** Access processed labels
*/
MultiArrayView<2, LabelInt> response()
{
return MultiArrayView<2, LabelInt>(intLabels_);
}
/** Access processed strata
*/
ArrayVectorView < LabelInt> strata()
{
return ArrayVectorView<LabelInt>(intLabels_.size(), intLabels_.data());
}
/** Access strata fraction sized - not used currently
*/
ArrayVectorView< double> strata_prob()
{
return ArrayVectorView< double>();
}
};
/** Regression Preprocessor - This basically does not do anything with the
* data.
*/
template<class LabelType, class T1, class C1, class T2, class C2>
class Processor<RegressionTag,LabelType, T1, C1, T2, C2>
{
public:
// only views are created - no data copied.
MultiArrayView<2, T1, C1> features_;
MultiArrayView<2, T2, C2> response_;
RandomForestOptions const & options_;
ProblemSpec<LabelType> const &
ext_param_;
// will only be filled if needed
MultiArray<2, int> strata_;
bool strata_filled;
// copy the views.
template<class T>
Processor( MultiArrayView<2, T1, C1> features,
MultiArrayView<2, T2, C2> response,
RandomForestOptions const & options,
ProblemSpec<T>& ext_param)
:
features_(features),
response_(response),
options_(options),
ext_param_(ext_param)
{
// set some of the problem specific parameters
ext_param.column_count_ = features.shape(1);
ext_param.row_count_ = features.shape(0);
ext_param.problem_type_ = REGRESSION;
ext_param.used_ = true;
detail::fill_external_parameters(options, ext_param);
vigra_precondition(!detail::contains_nan(features), "Processor(): Feature Matrix "
"Contains NaNs");
vigra_precondition(!detail::contains_nan(response), "Processor(): Response "
"Contains NaNs");
vigra_precondition(!detail::contains_inf(features), "Processor(): Feature Matrix "
"Contains inf");
vigra_precondition(!detail::contains_inf(response), "Processor(): Response "
"Contains inf");
strata_ = MultiArray<2, int> (MultiArrayShape<2>::type(response_.shape(0), 1));
ext_param.response_size_ = response.shape(1);
ext_param.class_count_ = response_.shape(1);
std::vector<T2> tmp_(ext_param.class_count_, 0);
ext_param.classes_(tmp_.begin(), tmp_.end());
}
/** access preprocessed features
*/
MultiArrayView<2, T1, C1> & features()
{
return features_;
}
/** access preprocessed response
*/
MultiArrayView<2, T2, C2> & response()
{
return response_;
}
/** access strata - this is not used currently
*/
MultiArray<2, int> & strata()
{
return strata_;
}
};
}
#endif //VIGRA_RF_PREPROCESSING_HXX
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