作者
Bai-chuan Deng, Yong-huan Yun, Yi-zeng Liang, Lun-zhao Yi
发表日期
2014
期刊
Analyst
卷号
139
期号
19
页码范围
4836-4845
出版商
Royal Society of Chemistry
简介
In this study, a new optimization algorithm called the Variable Iterative Space Shrinkage Approach (VISSA) that is based on the idea of model population analysis (MPA) is proposed for variable selection. Unlike most of the existing optimization methods for variable selection, VISSA statistically evaluates the performance of variable space in each step of optimization. Weighted binary matrix sampling (WBMS) is proposed to generate sub-models that span the variable subspace. Two rules are highlighted during the optimization procedure. First, the variable space shrinks in each step. Second, the new variable space outperforms the previous one. The second rule, which is rarely satisfied in most of the existing methods, is the core of the VISSA strategy. Compared with some promising variable selection methods such as competitive adaptive reweighted sampling (CARS), Monte Carlo uninformative variable elimination …
引用总数
2014201520162017201820192020202120222023202419117920191619188