fortiss GmbH Munich, Germany.
Department of Informatics, Technical University Munich Garching, Munich, Germany.
Front Neurorobot. 2013 Dec 4;7:21. doi: 10.3389/fnbot.2013.00021. eCollection 2013.
Gradient boosting machines are a family of powerful machine-learning techniques that have shown considerable success in a wide range of practical applications. They are highly customizable to the particular needs of the application, like being learned with respect to different loss functions. This article gives a tutorial introduction into the methodology of gradient boosting methods with a strong focus on machine learning aspects of modeling. A theoretical information is complemented with descriptive examples and illustrations which cover all the stages of the gradient boosting model design. Considerations on handling the model complexity are discussed. Three practical examples of gradient boosting applications are presented and comprehensively analyzed.
梯度提升机是一类强大的机器学习技术,它们在广泛的实际应用中取得了显著的成功。它们可以根据应用的特定需求进行高度定制,例如可以根据不同的损失函数进行学习。本文对梯度提升方法的方法进行了教程式的介绍,重点介绍了建模的机器学习方面。理论信息辅以描述性示例和说明,涵盖了梯度提升模型设计的所有阶段。讨论了处理模型复杂性的注意事项。还呈现并全面分析了梯度提升应用的三个实际示例。