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Combining Machine Learning Models Using combo Library

机译:使用Combo库结合机器学习模型

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摘要

Model combination, often regarded as a key sub-field of ensemble learning, has been widely used in both academic research and industry applications. To facilitate this process, we propose and implement an easy-to-use Python toolkit, combo, to aggregate models and scores under various scenarios, including classification, clustering, and anomaly detection. In a nutshell, combo provides a unified and consistent way to combine both raw and pretrained models from popular machine learning libraries. e.g., scikit-learn, XGBoost, and LightGBM. With accessibility and robustness in mind, combo is designed with detailed documentation, interactive examples, continuous integration, code coverage, and maintainability check; it can be installed easily through Python Package Index (PyPI) or https://github.com/yzhao062/combo.
机译:模型组合,通常被视为集合学习的关键子领域,已广泛用于学术研究和行业应用。 为了促进此过程,我们提出并实施了易于使用的Python Toolkit,Combo,在各种场景下聚合模型和分数,包括分类,聚类和异常检测。 简而言之,Combo提供了一种统一和一致的方式,可以将原始和预磨料的模型从流行的机器学习库结合起来。 例如,Scikit-Searn,XGBoost和LightGBM。 随着可访问性和鲁棒性,Combo旨在具有详细文档,交互式示例,持续集成,代码覆盖以及可维护性检查; 它可以通过Python包索引(PYPI)或https://github.com/yzhao062/combo轻松安装。

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