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A Practical Solution to the Small Sample Size Bias and Uncertainty Problems of Model Selection Criteria in Two-Input Process Multiple Response Surface Methodology Datasets

机译:两输入过程多响应面方法数据集中模型选择准则的小样本偏差和不确定性问题的实用解决方案

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Multiple response surface methodology (MRSM) most often involves the analysis of small sample size datasets which have associated inherent statistical modeling problems. Firstly, classical model selection criteria in use are very inefficient with small sample size datasets. Secondly, classical model selection criteria have an acknowledged selection uncertainty problem. Finally, there is a credibility problem associated with modeling small sample sizes of the order of most MRSM datasets. This work focuses on determination of a solution to these identified problems. The small sample model selection uncertainty problem is analysed using sixteen model selection criteria and a typical two-input MRSM dataset. Selection of candidate models, for the responses in consideration, is done based on response surface conformity to expectation to deliberately avoid selection of models using the problematic classical model selection criteria. A set of permutations of combinations of response models with conforming response surfaces is determined. Each combination is optimised and results are obtained using overlaying of data matrices. The permutation of results is then averaged to obtain credible results. Thus, a transparent multiple model approach is used to obtain the solution which gives some credibility to the small sample size results of the typical MRSM dataset. The conclusion is that, for a two-input process MRSM problem, conformity of response surfaces can be effectively used to select candidate models and thus the use of the problematic model selection criteria is avoidable.
机译:多重响应面方法(MRSM)通常涉及对具有相关的固有统计建模问题的小样本数据集的分析。首先,对于小样本数据集,使用的经典模型选择标准效率很低。其次,经典模型选择标准存在公认的选择不确定性问题。最后,存在与建模大多数MRSM数据集数量级的小样本大小相关的可信度问题。这项工作的重点是确定解决这些已确定问题的方法。使用十六种模型选择标准和典型的两输入MRSM数据集分析了小样本模型选择不确定性问题。针对考虑中的响应,基于响应表面对期望的符合性来选择候选模型,以故意避免使用有问题的经典模型选择标准来选择模型。确定响应模型与符合的响应曲面的组合的一组排列。每个组合都经过优化,并使用数据矩阵叠加获得了结果。然后对结果的排列求平均值,以获得可靠的结果。因此,使用透明的多模型方法来获得解决方案,该解决方案为典型MRSM数据集的小样本量结果提供了一定的可信度。结论是,对于两输入过程MRSM问题,可以有效地使用响应面的一致性来选择候选模型,因此可以避免使用有问题的模型选择标准。

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