mlquantify

A Python package for Quantification

The ultimate Python toolkit for class prevalence estimation. Robust methods, advanced metrics, and seamless scikit-learn integration.

Aggregative Methods

Estimate prevalence by aggregating individual classifications. Includes CC, ACC, PCC, and more.

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Non-Aggregative

Direct methods that bypass individual classification, optimizing global loss functions directly.

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Meta Quantification

Ensemble techniques and meta-learning approaches to boost quantification performance.

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Evaluation Metrics

Dedicated metrics for quantification tasks: Absolute Error, KL Divergence, and more.

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Confidence Intervals

Assess the reliability of your predictions with robust confidence interval estimation.

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Model Selection

Tools for hyperparameter tuning and selecting the best quantifier for your data.

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