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Multiple quantiles estimation model maintaining non-crossing condition (or monotone quantile condition) using LightGBM and XGBoost

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release Pythonv License Lint Test

MQBoost introduces an advanced model for estimating multiple quantiles while ensuring the non-crossing condition (monotone quantile condition). This model harnesses the capabilities of both LightGBM and XGBoost, two leading gradient boosting frameworks.

By implementing the hyperparameter optimization prowess of Optuna, the model achieves great performance. Optuna's optimization algorithms fine-tune the hyperparameters, ensuring the model operates efficiently.

Installation

Install using pip:

pip install mqboost

Usage

Features

  • MQDataset: Encapsulates the dataset used for MQRegressor and MQOptimizer.
  • MQRegressor: Custom multiple quantile estimator with preserving monotonicity among quantiles.
  • MQOptimizer: Optimize hyperparameters for MQRegressor with Optuna.

Example

Please refer to the Examples provided for further clarification.

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Multiple quantiles estimation model maintaining non-crossing condition (or monotone quantile condition) using LightGBM and XGBoost

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