get_sample_class_knnT_get_sample_class_knnGetSampleClassKnnGetSampleClassKnnget_sample_class_knn (Operator)

Name

get_sample_class_knnT_get_sample_class_knnGetSampleClassKnnGetSampleClassKnnget_sample_class_knn — Return a training sample from the training data of a k-nearest neighbors (k-NN) classifier.

Signature

get_sample_class_knn( : : KNNHandle, IndexSample : Features, ClassID)

Herror T_get_sample_class_knn(const Htuple KNNHandle, const Htuple IndexSample, Htuple* Features, Htuple* ClassID)

void GetSampleClassKnn(const HTuple& KNNHandle, const HTuple& IndexSample, HTuple* Features, HTuple* ClassID)

HTuple HClassKnn::GetSampleClassKnn(Hlong IndexSample, HTuple* ClassID) const

static void HOperatorSet.GetSampleClassKnn(HTuple KNNHandle, HTuple indexSample, out HTuple features, out HTuple classID)

HTuple HClassKnn.GetSampleClassKnn(int indexSample, out HTuple classID)

def get_sample_class_knn(knnhandle: HHandle, index_sample: int) -> Tuple[Sequence[float], Sequence[int]]

Description

get_sample_class_knnget_sample_class_knnGetSampleClassKnnGetSampleClassKnnGetSampleClassKnnget_sample_class_knn reads a training sample from the k-nearest neighbors (k-NN) classifier given by KNNHandleKNNHandleKNNHandleKNNHandleKNNHandleknnhandle that was added with add_sample_class_knnadd_sample_class_knnAddSampleClassKnnAddSampleClassKnnAddSampleClassKnnadd_sample_class_knn or read_class_knnread_class_knnReadClassKnnReadClassKnnReadClassKnnread_class_knn. The index of the sample is specified with IndexSampleIndexSampleIndexSampleIndexSampleindexSampleindex_sample. The index is counted from 0, i.e., IndexSampleIndexSampleIndexSampleIndexSampleindexSampleindex_sample must be a number between 0 and NumSamplesNumSamplesNumSamplesNumSamplesnumSamplesnum_samples - 1, where NumSamplesNumSamplesNumSamplesNumSamplesnumSamplesnum_samples can be determined with get_sample_num_class_knnget_sample_num_class_knnGetSampleNumClassKnnGetSampleNumClassKnnGetSampleNumClassKnnget_sample_num_class_knn. The training sample is returned in FeaturesFeaturesFeaturesFeaturesfeaturesfeatures and ClassIDClassIDClassIDClassIDclassIDclass_id. FeaturesFeaturesFeaturesFeaturesfeaturesfeatures is a feature vector of length NumDimNumDimNumDimNumDimnumDimnum_dim (see create_class_knncreate_class_knnCreateClassKnnCreateClassKnnCreateClassKnncreate_class_knn), while ClassIDClassIDClassIDClassIDclassIDclass_id is the class label, which is a number between 0 and the number of classes.

Execution Information

Parameters

KNNHandleKNNHandleKNNHandleKNNHandleKNNHandleknnhandle (input_control)  class_knn HClassKnn, HTupleHHandleHTupleHtuple (handle) (IntPtr) (HHandle) (handle)

Handle of the k-NN classifier.

IndexSampleIndexSampleIndexSampleIndexSampleindexSampleindex_sample (input_control)  integer HTupleintHTupleHtuple (integer) (int / long) (Hlong) (Hlong)

Index of the training sample.

FeaturesFeaturesFeaturesFeaturesfeaturesfeatures (output_control)  real-array HTupleSequence[float]HTupleHtuple (real) (double) (double) (double)

Feature vector of the training sample.

ClassIDClassIDClassIDClassIDclassIDclass_id (output_control)  integer-array HTupleSequence[int]HTupleHtuple (integer) (int / long) (Hlong) (Hlong)

Class of the training sample.

Result

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

Possible Predecessors

add_sample_class_train_dataadd_sample_class_train_dataAddSampleClassTrainDataAddSampleClassTrainDataAddSampleClassTrainDataadd_sample_class_train_data

See also

create_class_knncreate_class_knnCreateClassKnnCreateClassKnnCreateClassKnncreate_class_knn

Module

Foundation