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FeatureSelection.h
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3  * Written (w) 2014 Soumyajit De
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30 
31 #ifndef FEATURE_SELECTION_H__
32 #define FEATURE_SELECTION_H__
33 
34 #include <shogun/lib/config.h>
36 
37 namespace shogun
38 {
39 
40 class CFeatures;
41 class CLabels;
42 class CSubsetStack;
43 
48 {
51 };
52 
57 {
62 };
63 
139 template <class ST> class CFeatureSelection : public CPreprocessor
140 {
141 public:
144 
146  virtual ~CFeatureSelection();
147 
155  virtual CFeatures* apply(CFeatures* features);
156 
167  virtual float64_t compute_measures(CFeatures* features, index_t idx)=0;
168 
180  virtual CFeatures* remove_feats(CFeatures* features,
181  SGVector<index_t> argsorted)=0;
182 
185 
188 
190  virtual EFeatureType get_feature_type();
191 
193  virtual EPreprocessorType get_type() const;
194 
196  void set_target_dim(index_t target_dim);
197 
199  index_t get_target_dim() const;
200 
207  virtual void set_algorithm(EFeatureSelectionAlgorithm algorithm)=0;
208 
211 
218  virtual void set_policy(EFeatureRemovalPolicy policy)=0;
219 
222 
230  void set_num_remove(index_t num_remove);
231 
233  index_t get_num_remove() const;
234 
245  virtual void set_labels(CLabels* labels);
246 
248  CLabels* get_labels() const;
249 
251  virtual void cleanup();
252 
254  virtual const char* get_name() const
255  {
256  return "FeatureSelection";
257  }
258 
259 protected:
269  virtual CFeatures* apply_backward_elimination(CFeatures* features);
270 
276  virtual void precompute();
277 
285  virtual void adapt_params(CFeatures* features);
286 
296  index_t get_num_features(CFeatures* features) const;
297 
300 
303 
306 
314 
317 
320 
321 private:
323  void initialize_parameters();
324 
325 };
326 
327 }
328 #endif // FEATURE_SELECTION_H__
virtual const char * get_name() const
virtual void adapt_params(CFeatures *features)
EPreprocessorType
Definition: Preprocessor.h:32
SGVector< index_t > get_selected_feats()
int32_t index_t
Definition: common.h:62
The class Labels models labels, i.e. class assignments of objects.
Definition: Labels.h:43
virtual EPreprocessorType get_type() const
EFeatureClass
shogun feature class
Definition: FeatureTypes.h:38
class to add subset support to another class. A CSubsetStackStack instance should be added and wrappe...
Definition: SubsetStack.h:37
Template class CFeatureSelection, base class for all feature selection preprocessors which select a s...
void set_num_remove(index_t num_remove)
EFeatureSelectionAlgorithm get_algorithm() const
virtual void set_labels(CLabels *labels)
virtual CFeatures * apply_backward_elimination(CFeatures *features)
double float64_t
Definition: common.h:50
EFeatureRemovalPolicy get_policy() const
virtual EFeatureClass get_feature_class()
virtual void set_algorithm(EFeatureSelectionAlgorithm algorithm)=0
virtual void set_policy(EFeatureRemovalPolicy policy)=0
EFeatureSelectionAlgorithm m_algorithm
virtual float64_t compute_measures(CFeatures *features, index_t idx)=0
EFeatureType
shogun feature type
Definition: FeatureTypes.h:19
virtual CFeatures * remove_feats(CFeatures *features, SGVector< index_t > argsorted)=0
virtual EFeatureType get_feature_type()
all of classes and functions are contained in the shogun namespace
Definition: class_list.h:18
index_t get_num_features(CFeatures *features) const
EFeatureRemovalPolicy m_policy
The class Features is the base class of all feature objects.
Definition: Features.h:68
EFeatureSelectionAlgorithm
Class Preprocessor defines a preprocessor interface.
Definition: Preprocessor.h:75
void set_target_dim(index_t target_dim)
virtual CFeatures * apply(CFeatures *features)
CLabels * get_labels() const

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