KlassenKlassenKlassenKlassen | | | | Operatoren

get_sample_class_mlpT_get_sample_class_mlpGetSampleClassMlpget_sample_class_mlpGetSampleClassMlpGetSampleClassMlp (Operator)

Name

get_sample_class_mlpT_get_sample_class_mlpGetSampleClassMlpget_sample_class_mlpGetSampleClassMlpGetSampleClassMlp — Auslesen eines Trainingsmusters aus den Trainingsdaten eines mehrschichtigen Perzeptrons.

Signatur

get_sample_class_mlp( : : MLPHandle, IndexSample : Features, Target)

Herror T_get_sample_class_mlp(const Htuple MLPHandle, const Htuple IndexSample, Htuple* Features, Htuple* Target)

Herror get_sample_class_mlp(const HTuple& MLPHandle, const HTuple& IndexSample, HTuple* Features, HTuple* Target)

HTuple HClassMlp::GetSampleClassMlp(const HTuple& IndexSample, HTuple* Target) const

void GetSampleClassMlp(const HTuple& MLPHandle, const HTuple& IndexSample, HTuple* Features, HTuple* Target)

HTuple HClassMlp::GetSampleClassMlp(Hlong IndexSample, HTuple* Target) const

void HOperatorSetX.GetSampleClassMlp(
[in] VARIANT MLPHandle, [in] VARIANT IndexSample, [out] VARIANT* Features, [out] VARIANT* Target)

VARIANT HClassMlpX.GetSampleClassMlp(
[in] Hlong IndexSample, [out] VARIANT* Target)

static void HOperatorSet.GetSampleClassMlp(HTuple MLPHandle, HTuple indexSample, out HTuple features, out HTuple target)

HTuple HClassMlp.GetSampleClassMlp(int indexSample, out HTuple target)

Beschreibung

get_sample_class_mlpget_sample_class_mlpGetSampleClassMlpget_sample_class_mlpGetSampleClassMlpGetSampleClassMlp liest ein Trainingsmuster, das mit add_sample_class_mlpadd_sample_class_mlpAddSampleClassMlpadd_sample_class_mlpAddSampleClassMlpAddSampleClassMlp oder read_samples_class_mlpread_samples_class_mlpReadSamplesClassMlpread_samples_class_mlpReadSamplesClassMlpReadSamplesClassMlp hinzugefügt wurde, aus dem mehrschichtigen Perzeptron (MLP) MLPHandleMLPHandleMLPHandleMLPHandleMLPHandleMLPHandle aus. Der Index des auszulesenden Musters wird mit IndexSampleIndexSampleIndexSampleIndexSampleIndexSampleindexSample festgelegt. Er wird ab 0 gezählt, d.h. IndexSampleIndexSampleIndexSampleIndexSampleIndexSampleindexSample muss zwischen 0 und IndexSamples - 1 liegen, wobei IndexSamples mit get_sample_num_class_mlpget_sample_num_class_mlpGetSampleNumClassMlpget_sample_num_class_mlpGetSampleNumClassMlpGetSampleNumClassMlp bestimmt werden kann. Das Trainingsmuster wird in FeaturesFeaturesFeaturesFeaturesFeaturesfeatures und TargetTargetTargetTargetTargettarget zurückgegeben. Dabei ist FeaturesFeaturesFeaturesFeaturesFeaturesfeatures ein Merkmalsvektor der Länge NumInput und TargetTargetTargetTargetTargettarget ein Zielvektor der Länge NumOutput (siehe add_sample_class_mlpadd_sample_class_mlpAddSampleClassMlpadd_sample_class_mlpAddSampleClassMlpAddSampleClassMlp und create_class_mlpcreate_class_mlpCreateClassMlpcreate_class_mlpCreateClassMlpCreateClassMlp).

get_sample_class_mlpget_sample_class_mlpGetSampleClassMlpget_sample_class_mlpGetSampleClassMlpGetSampleClassMlp kann z.B. dazu verwendet werden, die Trainingsdaten mit classify_class_mlpclassify_class_mlpClassifyClassMlpclassify_class_mlpClassifyClassMlpClassifyClassMlp zu reklassifizieren, um festzustellen, welche der Trainingsmuster eventuell falsch klassifiziert werden.

Parallelisierung

Parameter

MLPHandleMLPHandleMLPHandleMLPHandleMLPHandleMLPHandle (input_control)  class_mlp HClassMlp, HTupleHTupleHClassMlp, HTupleHClassMlpX, VARIANTHtuple (integer) (IntPtr) (Hlong) (Hlong) (Hlong) (Hlong)

Handle des MLP.

IndexSampleIndexSampleIndexSampleIndexSampleIndexSampleindexSample (input_control)  integer HTupleHTupleHTupleVARIANTHtuple (integer) (int / long) (Hlong) (Hlong) (Hlong) (Hlong)

Nummer des gespeicherten Trainingsmusters.

FeaturesFeaturesFeaturesFeaturesFeaturesfeatures (output_control)  real-array HTupleHTupleHTupleVARIANTHtuple (real) (double) (double) (double) (double) (double)

Merkmalsvektor des Trainingsmusters.

TargetTargetTargetTargetTargettarget (output_control)  real-array HTupleHTupleHTupleVARIANTHtuple (real) (double) (double) (double) (double) (double)

Zielvektor des Trainingsmusters.

Beispiel (HDevelop)

* Train an MLP
create_class_mlp (NumIn, NumHidden, NumOut, 'softmax', \
                  'canonical_variates', NumComp, 42, MLPHandle)
read_samples_class_mlp (MLPHandle, 'samples.mtf')
train_class_mlp (MLPHandle, 100, 1, 0.01, Error, ErrorLog)
* Reclassify the training samples
get_sample_num_class_mlp (MLPHandle, NumSamples)
for I := 0 to NumSamples-1 by 1
    get_sample_class_mlp (MLPHandle, I, Data, Target)
    classify_class_mlp (MLPHandle, Data, 1, Class, Confidence)
    Result := gen_tuple_const(NumOut,0)
    Result[Class] := 1
    Diffs := Target-Result
    if (sum(fabs(Diffs)) > 0)
        * Sample has been classified incorrectly
    endif
endfor
clear_class_mlp (MLPHandle)

Ergebnis

Sind die Parameterwerte korrekt, dann liefert get_sample_class_mlpget_sample_class_mlpGetSampleClassMlpget_sample_class_mlpGetSampleClassMlpGetSampleClassMlp den Wert 2 (H_MSG_TRUE). Gegebenenfalls wird eine Fehlerbehandlung durchgeführt.

Vorgänger

add_sample_class_mlpadd_sample_class_mlpAddSampleClassMlpadd_sample_class_mlpAddSampleClassMlpAddSampleClassMlp, read_samples_class_mlpread_samples_class_mlpReadSamplesClassMlpread_samples_class_mlpReadSamplesClassMlpReadSamplesClassMlp, get_sample_num_class_mlpget_sample_num_class_mlpGetSampleNumClassMlpget_sample_num_class_mlpGetSampleNumClassMlpGetSampleNumClassMlp

Nachfolger

classify_class_mlpclassify_class_mlpClassifyClassMlpclassify_class_mlpClassifyClassMlpClassifyClassMlp, evaluate_class_mlpevaluate_class_mlpEvaluateClassMlpevaluate_class_mlpEvaluateClassMlpEvaluateClassMlp

Siehe auch

create_class_mlpcreate_class_mlpCreateClassMlpcreate_class_mlpCreateClassMlpCreateClassMlp

Modul

Foundation


KlassenKlassenKlassenKlassen | | | | Operatoren