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Boosting for statistical modelling-A non-technical introduction

机译:提高统计建模 - 非技术介绍

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摘要

Boosting algorithms were originally developed for machine learning but were later adapted to estimate statistical models—offering various practical advantages such as automated variable selection and implicit regularization of effect estimates. The interpretation of the resulting models, however, remains the same as if they had been fitted by classical methods. Boosting, hence, allows to use an advanced machine learning scheme to estimate various types of statistical models. This tutorial aims to highlight how boosting can be used for semi-parametric modelling, what practical implications follow from the design of the algorithm and what kind of drawbacks data analysts have to expect. We illustrate the application of boosting in the analysis of a stunting score from children in India and a high-dimensional dataset of tumour DNA to develop a biomarker for the occurrence of metastases in breast cancer patients.
机译:促进算法最初是为机器学习开发的,但后来适于估算统计模型 - 提供各种实际优点,例如自动变量选择和效果估计的隐式正则化。 然而,由此产生的模型的解释保持与古典方法所拟合的相同。 因此,提升,允许使用先进的机器学习方案来估计各种类型的统计模型。 本教程旨在突出促销如何用于半参数建模,从算法设计中遵循的实际影响以及数据分析师必须期望的缺点是什么样的。 我们说明了在印度儿童和肿瘤DNA的高维数据集分析中促进促进分析的应用,以开发乳腺癌患者转移的生物标志物。

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