mlrl.boosting.testbed.experiments.output.probability_calibration.writer module¶
Author: Michael Rapp (michael.rapp.ml@gmail.com)
Provides classes that allow writing textual representations of probability calibration models to one or several sinks.
- class mlrl.boosting.testbed.experiments.output.probability_calibration.writer.JointProbabilityCalibrationModelWriter(*extractors: DataExtractor)¶
Bases:
ProbabilityCalibrationModelWriterAllows writing textual representations of models for the calibration of joint probabilities to one or several sinks.
- class DefaultExtractor¶
Bases:
DefaultExtractorExtracts isotonic regression models for the calibration of joint probabilities that are stores as part of a rule model.
- class mlrl.boosting.testbed.experiments.output.probability_calibration.writer.MarginalProbabilityCalibrationModelWriter(*extractors: DataExtractor)¶
Bases:
ProbabilityCalibrationModelWriterAllows writing textual representations of models for the calibration of marginal probabilities to one or several sinks.
- class DefaultExtractor¶
Bases:
DefaultExtractorExtracts isotonic regression models for the calibration of marginal probabilities that are stores as part of a rule model.
- class mlrl.boosting.testbed.experiments.output.probability_calibration.writer.ProbabilityCalibrationModelWriter(*extractors: DataExtractor)¶
Bases:
OutputWriter,ABCAllows writing textual representations of probability calibration models to one or several sinks.
- class DefaultExtractor¶
Bases:
DataExtractor,ABCAn abstract base class for all classes that extract probability calibration models that are stored as part of a rule model.
- extract_data(state: ExperimentState, _: List[Sink]) OutputData | None¶
See
mlrl.testbed.experiments.output.writer.DataExtractor.extract_data()