BriefGPT.xyz
Sep, 2021
自动分量提升:可解释性自动机器学习系统
Automatic Componentwise Boosting: An Interpretable AutoML System
HTML
PDF
Stefan Coors, Daniel Schalk, Bernd Bischl, David Rügamer
TL;DR
提出了一种AutoML系统,其构建了可解释的加法模型,使用高度可扩展的分量提升算法进行拟合,提供了易于模型解释的工具,并且在预测性能上与其他基于AutoML比较系统相媲美,更易于使用和透明。
Abstract
In practice,
machine learning
(ML) workflows require various different steps, from data preprocessing, missing value imputation, model selection, to model tuning as well as model evaluation. Many of these steps rely on human ML experts.
→