pyanno4rt.optimization.components._decision_tree_ntcp

Decision tree NTCP component.

Overview

Classes

DecisionTreeNTCP

Decision tree NTCP component class.

Classes

class pyanno4rt.optimization.components._decision_tree_ntcp.DecisionTreeNTCP(model_parameters, embedding='active', weight=1.0, rank=1, bounds=None, link=None, identifier=None, display=True)[source]

Bases: pyanno4rt.optimization.components.MachineLearningComponentClass

Decision tree NTCP component class.

This class provides methods to compute the value and the gradient of the decision tree NTCP component, as well as to add the decision tree model.

Parameters:
  • model_parameters (dict) – Dictionary with the data handling & learning model parameters, see the class MachineLearningComponentClass.

  • embedding ({'active', 'passive'}, default='active') – Mode of embedding for the component. In ‘passive’ mode, the component value is computed and tracked, but not considered in the optimization problem, unlike in ‘active’ mode.

  • weight (int or float, default=1.0) – Weight of the component function.

  • rank (int, default=1) – Rank of the component in the lexicographic order.

  • bounds (None or list, default=None) – Constraint bounds for the component.

  • link (None or list, default=None) – Other segments used for joint evaluation.

  • identifier (None or str, default=None) – Additional string for naming the component.

  • display (bool, default=True) – Indicator for the display of the component.

data_model_handler

The object used to handle the dataset, the feature map generation and the feature (re-)calculation.

Type:

object of class DataModelHandler

model

The object used to preprocess, tune, train, inspect and evaluate the decision tree model.

Type:

object of class DecisionTreeModel

parameter_value

Value of the decision tree model parameters.

Type:

list

bounds

See ‘Parameters’.

Type:

list

Overview

Methods

add_model()

Add the decision tree model to the component.

compute_value(*args)

Compute the component value.

compute_gradient(*args)

Compute the component gradient.

Members

add_model()[source]

Add the decision tree model to the component.

compute_value(*args)[source]

Compute the component value.

Parameters:

*args (tuple) – Keyworded parameters, where args[0] must be the dose vector(s) to evaluate and args[1] the corresponding segment(s).

Returns:

Value of the component function.

Return type:

float

compute_gradient(*args)[source]

Compute the component gradient.

Parameters:

*args (tuple) – Keyworded parameters, where args[0] must be the dose vector(s) to evaluate and args[1] the corresponding segment(s).

Returns:

Value of the component gradient.

Return type:

ndarray