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select_feature_set_svmSelectFeatureSetSvmSelectFeatureSetSvmselect_feature_set_svmT_select_feature_set_svm🔗

Short description🔗

select_feature_set_svmSelectFeatureSetSvmSelectFeatureSetSvmselect_feature_set_svmT_select_feature_set_svm — Selects an optimal combination of features to classify the provided data.

Signature🔗

select_feature_set_svm( class_train_data ClassTrainDataHandle, string SelectionMethod, string GenParamName, number GenParamValue, out class_svm SVMHandle, out string SelectedFeatureIndices, out real Score )void SelectFeatureSetSvm( const HTuple& ClassTrainDataHandle, const HTuple& SelectionMethod, const HTuple& GenParamName, const HTuple& GenParamValue, HTuple* SVMHandle, HTuple* SelectedFeatureIndices, HTuple* Score )static void HOperatorSet.SelectFeatureSetSvm( HTuple classTrainDataHandle, HTuple selectionMethod, HTuple genParamName, HTuple genParamValue, out HTuple SVMHandle, out HTuple selectedFeatureIndices, out HTuple score )def select_feature_set_svm( class_train_data_handle: HHandle, selection_method: str, gen_param_name: MaybeSequence[str], gen_param_value: MaybeSequence[Union[int, str, float]] ) -> Tuple[HHandle, Sequence[str], Sequence[float]]

Herror T_select_feature_set_svm( const Htuple ClassTrainDataHandle, const Htuple SelectionMethod, const Htuple GenParamName, const Htuple GenParamValue, Htuple* SVMHandle, Htuple* SelectedFeatureIndices, Htuple* Score )

HTuple HClassSvm::SelectFeatureSetSvm( const HClassTrainData& ClassTrainDataHandle, const HString& SelectionMethod, const HTuple& GenParamName, const HTuple& GenParamValue, HTuple* Score )

HTuple HClassSvm::SelectFeatureSetSvm( const HClassTrainData& ClassTrainDataHandle, const HString& SelectionMethod, const HString& GenParamName, double GenParamValue, HTuple* Score )

HTuple HClassSvm::SelectFeatureSetSvm( const HClassTrainData& ClassTrainDataHandle, const char* SelectionMethod, const char* GenParamName, double GenParamValue, HTuple* Score )

HTuple HClassSvm::SelectFeatureSetSvm( const HClassTrainData& ClassTrainDataHandle, const wchar_t* SelectionMethod, const wchar_t* GenParamName, double GenParamValue, HTuple* Score ) (Windows only)

HClassSvm HClassTrainData::SelectFeatureSetSvm( const HString& SelectionMethod, const HTuple& GenParamName, const HTuple& GenParamValue, HTuple* SelectedFeatureIndices, HTuple* Score ) const

HClassSvm HClassTrainData::SelectFeatureSetSvm( const HString& SelectionMethod, const HString& GenParamName, double GenParamValue, HTuple* SelectedFeatureIndices, HTuple* Score ) const

HClassSvm HClassTrainData::SelectFeatureSetSvm( const char* SelectionMethod, const char* GenParamName, double GenParamValue, HTuple* SelectedFeatureIndices, HTuple* Score ) const

HClassSvm HClassTrainData::SelectFeatureSetSvm( const wchar_t* SelectionMethod, const wchar_t* GenParamName, double GenParamValue, HTuple* SelectedFeatureIndices, HTuple* Score ) const (Windows only)

HTuple HClassSvm.SelectFeatureSetSvm( HClassTrainData classTrainDataHandle, string selectionMethod, HTuple genParamName, HTuple genParamValue, out HTuple score )

HTuple HClassSvm.SelectFeatureSetSvm( HClassTrainData classTrainDataHandle, string selectionMethod, string genParamName, double genParamValue, out HTuple score )

HClassSvm HClassTrainData.SelectFeatureSetSvm( string selectionMethod, HTuple genParamName, HTuple genParamValue, out HTuple selectedFeatureIndices, out HTuple score )

HClassSvm HClassTrainData.SelectFeatureSetSvm( string selectionMethod, string genParamName, double genParamValue, out HTuple selectedFeatureIndices, out HTuple score )

Description🔗

select_feature_set_svmSelectFeatureSetSvm selects an optimal subset from a set of features to solve a given classification problem. The classification problem has to be specified with annotated training data in ClassTrainDataHandleclassTrainDataHandleclass_train_data_handle and will be classified by a support vector machine (SVM). Details of the properties of this classifier can be found in create_class_svmCreateClassSvm.

The result of the operator is a trained classifier that is returned in SVMHandleSVMHandlesvmhandle. Additionally, the list of indices or names of the selected features is returned in SelectedFeatureIndicesselectedFeatureIndicesselected_feature_indices. To use this classifier, calculate for new input data all features mentioned in SelectedFeatureIndicesselectedFeatureIndicesselected_feature_indices and pass them to the classifier.

A possible application of this operator can be a comparison of different parameter sets for certain feature extraction techniques. Another application is to search for a feature that is discriminating between different classes.

Additionally, the values for 'nu'"nu" and 'gamma'"gamma" can be estimated for the SVM. To only estimate these two parameters without altering the feature set, the feature vector has to be specified as one large subfeature.

To define the features that should be selected from ClassTrainDataHandleclassTrainDataHandleclass_train_data_handle, the dimensions of the feature vectors in ClassTrainDataHandleclassTrainDataHandleclass_train_data_handle can be grouped into subfeatures by calling set_feature_lengths_class_train_dataSetFeatureLengthsClassTrainData. A subfeature can contain several subsequent elements of a feature vector. The operator decides for each of these subfeatures, if it is better to use it for the classification or leave it out.

The indices of the selected subfeatures are returned in SelectedFeatureIndicesselectedFeatureIndicesselected_feature_indices. If names were set in set_feature_lengths_class_train_dataSetFeatureLengthsClassTrainData, these names are returned instead of the indices. If set_feature_lengths_class_train_dataSetFeatureLengthsClassTrainData was not called for ClassTrainDataHandleclassTrainDataHandleclass_train_data_handle before, each element of the feature vector is considered as a subfeature.

The selection method SelectionMethodselectionMethodselection_method is either a greedy search 'greedy'"greedy" (iteratively add the feature with highest gain) or the dynamically oscillating search 'greedy_oscillating'"greedy_oscillating" (add the feature with highest gain and test then if any of the already added features can be left out without great loss). The method 'greedy'"greedy" is generally preferable, since it is faster. Only in cases when the subfeatures are low-dimensional or redundant, the method 'greedy_oscillating'"greedy_oscillating" should be chosen.

The optimization criterion is the classification rate of a two-fold cross-validation of the training data. The best achieved value is returned in Scorescorescore.

The parameters 'nu'"nu" and 'gamma'"gamma" for the SVM that is used to classify can be set to 'auto'"auto" by using the parameters GenParamNamegenParamNamegen_param_name and GenParamValuegenParamValuegen_param_value. If they are set to 'auto'"auto", the estimated optimal 'nu'"nu" and/or 'gamma'"gamma" is estimated. The automatic estimation of 'nu'"nu" and 'gamma'"gamma" can take a substantial amount of time (up to days, depending on the data set and the number of features).

Additionally, there is the parameter 'mode'"mode" which can be either set to 'one-versus-all'"one-versus-all" or 'one-versus-one'"one-versus-one". An explanation of the two modes as well as of the parameters 'nu'"nu" and 'gamma'"gamma" as the kernel parameter of the radial basis function (RBF) kernel can be found in create_class_svmCreateClassSvm.

Attention🔗

This operator may take considerable time, depending on the size of the data set in the training file, and the number of features.

Please note, that this operator should not be called, if only a small set of training data is available. Due to the risk of overfitting the operator select_feature_set_svmSelectFeatureSetSvm may deliver a classifier with a very high score. However, the classifier may perform poorly when tested.

Execution information🔗

Execution information
  • Multithreading type: reentrant (runs in parallel with non-exclusive operators).

  • Multithreading scope: global (may be called from any thread).

  • Automatically parallelized on internal data level.

This operator returns a handle. Note that the state of an instance of this handle type may be changed by specific operators even though the handle is used as an input parameter by those operators.

Parameters🔗

ClassTrainDataHandleclassTrainDataHandleclass_train_data_handle (input_control) class_train_data → (handle)HTuple (HHandle)HClassTrainData, HTuple (IntPtr)HHandleHtuple (handle)

Handle of the training data.

SelectionMethodselectionMethodselection_method (input_control) string → (string)HTuple (HString)HTuple (string)strHtuple (char*)

Method to perform the selection.

Default: 'greedy'"greedy"
List of values: 'greedy', 'greedy_oscillating'"greedy", "greedy_oscillating"

GenParamNamegenParamNamegen_param_name (input_control) string(-array) → (string)HTuple (HString)HTuple (string)MaybeSequence[str]Htuple (char*)

Names of generic parameters to configure the selection process and the classifier.

Default: [][]
List of values: 'gamma', 'mode', 'nu'"gamma", "mode", "nu"

GenParamValuegenParamValuegen_param_value (input_control) number(-array) → (real / integer / string)HTuple (double / Hlong / HString)HTuple (double / int / long / string)MaybeSequence[Union[int, str, float]]Htuple (double / Hlong / char*)

Values of generic parameters to configure the selection process and the classifier.

Default: [][]
Suggested values: 0.02, 0.05, 'auto', 'one-versus-one', 'one-versus-all'0.02, 0.05, "auto", "one-versus-one", "one-versus-all"

SVMHandleSVMHandlesvmhandle (output_control) class_svm → (handle)HTuple (HHandle)HClassSvm, HTuple (IntPtr)HHandleHtuple (handle)

A trained SVM classifier using only the selected features.

SelectedFeatureIndicesselectedFeatureIndicesselected_feature_indices (output_control) string-array → (string)HTuple (HString)HTuple (string)Sequence[str]Htuple (char*)

The selected feature set, contains indices.

Scorescorescore (output_control) real-array → (real)HTuple (double)HTuple (double)Sequence[float]Htuple (double)

The achieved score using two-fold cross-validation.

Example🔗

(HDevelop)

* Find out which of the two features distinguishes two Classes
NameFeature1 := 'Good Feature'
NameFeature2 := 'Bad Feature'
LengthFeature1 := 3
LengthFeature2 := 2
* Create training data
create_class_train_data (LengthFeature1+LengthFeature2,\
  ClassTrainDataHandle)
* Define the features which are in the training data
set_feature_lengths_class_train_data (ClassTrainDataHandle, [LengthFeature1,\
  LengthFeature2], [NameFeature1, NameFeature2])
* Add training data
*                                                         |Feat1| |Feat2|
add_sample_class_train_data (ClassTrainDataHandle, 'row', [1,1,1,  2,1  ], 0)
add_sample_class_train_data (ClassTrainDataHandle, 'row', [2,2,2,  2,1  ], 1)
add_sample_class_train_data (ClassTrainDataHandle, 'row', [1,1,1,  3,4  ], 0)
add_sample_class_train_data (ClassTrainDataHandle, 'row', [2,2,2,  3,4  ], 1)
* Add more data
* ...
* Select the better feature with a SVM
select_feature_set_svm (ClassTrainDataHandle, 'greedy', [], [], SVMHandle,\
  SelectedFeatureSVM, Score)
* Use the classifier
* ...

Result🔗

If the parameters are valid, the operator select_feature_set_svmSelectFeatureSetSvm returns the value 2 (H_MSG_TRUE). If necessary, an exception is raised.

Combinations with other operators🔗

Combinations

Possible predecessors

create_class_train_dataCreateClassTrainData, add_sample_class_train_dataAddSampleClassTrainData, set_feature_lengths_class_train_dataSetFeatureLengthsClassTrainData

Possible successors

classify_class_svmClassifyClassSvm

Alternatives

select_feature_set_mlpSelectFeatureSetMlp, select_feature_set_knnSelectFeatureSetKnn, select_feature_set_gmmSelectFeatureSetGmm

See also

select_feature_set_trainf_svmSelectFeatureSetTrainfSvm, gray_featuresGrayFeatures, region_featuresRegionFeatures

Module🔗

Foundation