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首页> 外文期刊>Biometrika >Locally φ_p-optimal designs for generalized linear models with a single-variable quadratic polynomial predictor
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Locally φ_p-optimal designs for generalized linear models with a single-variable quadratic polynomial predictor

机译:具有单变量二次多项式预测变量的广义线性模型的局部φ_p最优设计

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摘要

Finding optimal designs for generalized linear models is a challenging problem. Recent research has identified the structure of optimal designs for generalized linear models with single or multiple unrelated explanatory variables that appear as first-order terms in the predictor. We consider generalized linear models with a single-variable quadratic polynomial as the predictor under a popular family of optimality criteria. When the design region is unrestricted, our results establish that optimal designs can be found within a subclass of designs based on a small support with symmetric structure. We show that the same conclusion holds with certain restrictions on the design region, but in other cases a larger subclass may have to be considered. In addition, we derive explicit expressions for some D-optimal designs.
机译:为广义线性模型寻找最佳设计是一个具有挑战性的问题。最近的研究已经确定了具有单个或多个不相关的解释变量的广义线性模型的最优设计的结构,这些变量在预测变量中作为一阶项出现。我们将带有单变量二次多项式的广义线性模型视为流行的最优性标准族下的预测变量。当设计区域不受限制时,我们的结果表明,可以在具有对称结构的小支撑的基础上,在子类设计中找到最佳设计。我们表明,相同的结论在设计区域上有一定限制,但在其他情况下,可能必须考虑更大的子类。另外,我们为某些D最优设计导出了显式表达式。

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