可解释性
平滑的
协变量
维数之咒
线性回归
回归
数学
回归分析
加性模型
组分(热力学)
非参数回归
计量经济学
计算机科学
数据挖掘
统计
机器学习
物理
热力学
作者
Byeong U. Park,Enno Mammen,Young Lee,Eun Ryung Lee
摘要
Summary Varying coefficient regression models are known to be very useful tools for analysing the relation between a response and a group of covariates. Their structure and interpretability are similar to those for the traditional linear regression model, but they are more flexible because of the infinite dimensionality of the corresponding parameter spaces. The aims of this paper are to give an overview on the existing methodological and theoretical developments for varying coefficient models and to discuss their extensions with some new developments. The new developments enable us to use different amount of smoothing for estimating different component functions in the models. They are for a flexible form of varying coefficient models that requires smoothing across different covariates' spaces and are based on the smooth backfitting technique that is admitted as a powerful technique for fitting structural regression models and is also known to free us from the curse of dimensionality.
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