遗传算法应用于分数多项式的权力选择:在糖尿病数据中的应用

Barnabe Ndabashinze, Gülesen Üstündağ Şiray, L. Scrucca
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引用次数: 1

摘要

分数阶多项式是多变量构建模型中选择相关变量及其函数形式的有力统计工具。变量的选择及其相应的功率通过多变量分数多项式(MFP)算法进行,该算法使用基于统计显著性水平α的封闭测试程序,称为函数选择程序(FSP)。遗传算法是一种基于候选解的字符串表示和选择、交叉、变异等多种操作的随机搜索和优化方法;通过最小化贝叶斯信息准则(BIC),在扩展的实数集合(待指定)中选择幂。通过仿真研究和对实际数据集的应用,比较了两种算法在许多场景下的应用。两种算法在均方误差方面都表现良好,遗传算法与MFP算法相比产生了更简洁的模型。
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Genetic Algorithms Applied to Fractional Polynomials for Power Selection: Application to Diabetes Data
Fractional polynomials are powerful statistic tools used in multivariable building model to select relevant variables and their functional form. This selection of variables, together with their corresponding power is performed through a multivariable fractional polynomials (MFP) algorithm that uses a closed test procedure, called function selection procedure (FSP), based on the statistical significance level α. In this paper, Genetic algorithms, which are stochastic search and optimization methods based on string representation of candidate solutions and various operators such as selection, crossover and mutation; reproducing genetic processes in nature, are used as alternative to MFP algorithm to select powers in an extended set of real numbers (to be specified) by minimizing the Bayesian Information Criteria (BIC). A simulation study and an application to a real dataset are performed to compare the two algorithms in many scenarios. Both algorithms perform quite well in terms of mean square error with Genetic algorithms that yied a more parsimonious model comparing to MFP Algorithm .
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