首页> 外文会议>Genetic and Evolutionary Computation Conference Pt.2 Jul 12-16, 2003 Chicago, IL, USA >A Methodology for Combining Symbolic Regression and Design of Experiments to Improve Empirical Model Building
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A Methodology for Combining Symbolic Regression and Design of Experiments to Improve Empirical Model Building

机译:一种将符号回归与实验设计相结合以改进经验模型构建的方法

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摘要

A novel methodology for empirical model building using GP-generated symbolic regression in combination with statistical design of experiments as well as undesigned data is proposed. The main advantage of this methodology is the maximum data utilization when extrapolation is necessary. The methodology offers alternative non-linear models that can either linearize the response in the presence of Lack or Fit or challenge and confirm the results from the linear regression in a cost effective and time efficient fashion. The economic benefit is the reduced number of additional experiments in the presence of Lack of Fit.
机译:提出了一种使用GP生成的符号回归与实验统计设计以及未设计数据相结合的经验模型构建的新方法。这种方法的主要优点是在需要外推时可以最大程度地利用数据。该方法提供了其他非线性模型,这些模型可以在缺少或拟合或挑战的情况下线性化响应,并以经济高效且省时的方式确认线性回归的结果。经济效益是在缺乏健康的情况下减少了额外的实验次数。

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