Optimal Determination of K Constant of Ridge Regression Using a Simple Genetic Algorithm

R.J. Praga-Alejo, L.M. Torres-Trevio, M.R. Pia-Monarrez
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引用次数: 9

Abstract

In the present work, the optimal determination of the constant k of ridge regression (RR) model was developed, since this method of regression permit to reduce the multicollinearity problem and it is a one advantage that takes the ridge regression model over ordinary least square (OLS). The optimal constant k was developed by some technique derived from intelligent systems (genetic algorithm) and some statistics techniques. In this paper we present a comparison between these two methodologies for finding the optimal constant k since this constant givesless variance, giving stability to the estimate coefficients and reduce the multicollinearity problem. The results analyzed by the statistical methods, showed that MSR and R2 have very good performance but theVIF's are greater than genetic algorithm (GA) and theGA reduces the VIF's but reduces R2 and increment the MSR.
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用简单遗传算法确定岭回归K常数
本文提出了岭回归(RR)模型k常数的最优确定方法,因为这种回归方法可以减少多重共线性问题,并且是岭回归模型优于普通最小二乘(OLS)的一个优点。最优常数k是由智能系统衍生的一些技术(遗传算法)和一些统计技术开发的。本文比较了这两种方法在寻找最优常数k的问题上的应用,因为k常数是无方差的,使估计系数具有稳定性,减少了多重共线性问题。统计分析结果表明,遗传算法虽然降低了VIF,但降低了R2,增加了MSR,但MSR和R2的性能都很好。
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