A comparison of subset selection and adaptive basis function construction for polynomial regression model building

Gints Jēkabsons, J. Lavendels
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引用次数: 3

Abstract

A comparison of subset selection and adaptive basis function construction for polynomial regression model building The approach of subset selection in polynomial regression model building assumes that the chosen fixed full set of predefined basis functions contains a subset that is sufficient to describe the target relation sufficiently well. However, in most cases the necessary set of basis functions is not known and needs to be guessed - a potentially non-trivial (and long) trial and error process. In our previous research we considered an approach for polynomial regression model building which is different from the subset selection - letting the regression model building method itself construct the basis functions necessary for creating a model of arbitrary complexity without restricting oneself to the basis functions of a predefined full model. The approach is titled Adaptive Basis Function Construction (ABFC). In the present paper we compare the two approaches for polynomial regression model building - subset selection and ABFC - both theoretically and empirically in terms of their underlying principles, computational complexity, and predictive performance. Additionally in empirical evaluations the ABFC is compared also to two other well-known regression modelling methods - Locally Weighted Polynomials and Multivariate Adaptive Regression Splines.
多项式回归模型子集选择与自适应基函数构造的比较
多项式回归模型的子集选择与自适应基函数构建的比较多项式回归模型构建中的子集选择方法假设所选择的固定的预定义基函数集合包含一个足以充分描述目标关系的子集。然而,在大多数情况下,必要的基函数集是未知的,需要猜测——这可能是一个不平凡(且漫长)的试错过程。在我们之前的研究中,我们考虑了一种不同于子集选择的多项式回归模型构建方法,即让回归模型构建方法自己构建创建任意复杂性模型所需的基函数,而不局限于预定义的完整模型的基函数。这种方法被称为自适应基函数构造(ABFC)。在本文中,我们比较了多项式回归模型构建的两种方法-子集选择和ABFC -在理论和经验方面的基本原理,计算复杂性和预测性能。此外,在经验评估中,ABFC还与另外两种著名的回归建模方法——局部加权多项式和多元自适应回归样条进行了比较。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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