Statistical¶
The samplesizelib.linear.statistical contains next classes:
samplesizelib.linear.statistical.LagrangeEstimatorsamplesizelib.linear.statistical.LikelihoodRatioEstimatorsamplesizelib.linear.statistical.WaldEstimator
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class
samplesizelib.linear.statistical.LagrangeEstimator(statmodel, **kwards)[source]¶ Description of Lagrange Method
Parameters: - statmodel (RegressionModel or LogisticModel) – the machine learning algorithm
- ind_u (numpy.ndarray) – to do
- epsilon (float) – to do
- alpha (float) – to do
- beta (float) – to do
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forward(features, target)[source]¶ Returns sample size prediction for the given dataset.
Parameters: - features (array.) – The tensor of shape num_elements \(\times\) num_feature.
- target (array.) – The tensor of shape num_elements.
Returns: sample size estimation for the given dataset.
Return type: dict
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class
samplesizelib.linear.statistical.LikelihoodRatioEstimator(statmodel, **kwards)[source]¶ Description of Likelihood Ratio Method
Parameters: - statmodel (RegressionModel or LogisticModel) – the machine learning algorithm
- ind_u (numpy.ndarray) – to do
- epsilon (float) – to do
- alpha (float) – to do
- beta (float) – to do
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forward(features, target)[source]¶ Returns sample size prediction for the given dataset.
Parameters: - features (array.) – The tensor of shape num_elements \(\times\) num_feature.
- target (array.) – The tensor of shape num_elements.
Returns: sample size estimation for the given dataset.
Return type: dict
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class
samplesizelib.linear.statistical.WaldEstimator(statmodel, **kwards)[source]¶ Description of Wald Method
Parameters: - statmodel (RegressionModel or LogisticModel) – the machine learning algorithm
- ind_u (numpy.ndarray) – to do
- epsilon (float) – to do
- alpha (float) – to do
- beta (float) – to do
-
forward(features, target)[source]¶ Returns sample size prediction for the given dataset.
Parameters: - features (array.) – The tensor of shape num_elements \(\times\) num_feature.
- target (array.) – The tensor of shape num_elements.
Returns: sample size estimation for the given dataset.
Return type: dict