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首页> 外文期刊>Journal of statistical computation and simulation >Model selection via conditional conceptual predictive statistic under ridge regression in linear mixed models
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Model selection via conditional conceptual predictive statistic under ridge regression in linear mixed models

机译:通过线性混合模型的脊回归下的条件概念预测统计模型选择

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摘要

In this paper, we focus on the progress of variant of conceptual predictive () statistic and we propose the model selection criterion that depend on statistic under ridge regression for linear mixed model selection. The proposed criterion is conditional ridge () statistic based on the expected conditional Gauss discrepancy. Two versions of statistic under the assumptions that the variance components are known and unknown are derived. To examine the performance of the proposed criterion, a real data analysis and a Monte Carlo simulation study are given.
机译:在本文中,我们专注于概念预测()统计变量的进展,并提出了依赖于脊回归下统计的模型选择标准,以进行线性混合模型选择。所提出的标准是基于预期条件高斯差异的条件脊()统计。导出了variance分量已知和未知的假设下的两个版本的统计文本。为了检查所提出的标准的性能,给出了实际数据分析和蒙特卡罗模拟研究。

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