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Comparison of regression analysis, Artificial Neural Network and genetic programming in Handling the multicollinearity problem

机译:回归分析,人工神经网络和处理多重性问题的基因编程

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Highly correlated predictors in a data set give rise to the multicollinearity problem and models derived from them may lead to erroneous system analysis. An appropriate predictor selection using variable reduction methods and Factor Analysis (FA) can eliminate this problem. These methods prove to be commendable particularly when used in conjunction with modeling methods that do not automate predictor selection such as Artificial Neural Network (ANN), Fuzzy Logic (FL), etc. The problem of severe multicollinearity is studied using data involving the estimation of fat content inside body. The purpose of the study is to select the subset of predictors from the set of highly correlated predictors. An attempt to identify the relevant predictors is comprehensively studied using Regression Analysis, Factor Analysis-Artificial Neural Networks (FA-ANN) and Genetic Programming (GP). The interpretation and comparisons of modeling methods are summarized in order to guide users about the proper techniques for tackling multicollinearity problems.
机译:数据集中导致由其衍生的多重共线性问题和模型高度相关的预测可能会导致错误的系统的分析。使用可变的还原方法和因素分析(FA)的适当预测值选择可以消除这个问题。结合建模不自动机器预测值选择的方法,例如人工神经网络(ANN),模糊逻辑(FL),等使用尤其是当这些方法被证明是值得称道的使用涉及的估计数据进行了研究严重多重共线性问题脂肪含量体内。这项研究的目的是从一组高度相关的预测中选择预测的子集。识别相关预测试图用回归分析,因子分析,人工神经网络(FA-ANN)和遗传编程(GP)全面的研究。的解释和建模方法比较总结,以指导用户关于解决多重共线性问题的正确方法。

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