Designs for generalized linear models with several variables and model uncertainty
Contribuinte(s) |
Dr Randy Sitter |
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Data(s) |
01/01/2006
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Resumo |
Standard factorial designs sometimes may be inadequate for experiments that aim to estimate a generalized linear model, for example, for describing a binary response in terms of several variables. A method is proposed for finding exact designs for such experiments that uses a criterion allowing for uncertainty in the link function, the linear predictor, or the model parameters, together with a design search. Designs are assessed and compared by simulation of the distribution of efficiencies relative to locally optimal designs over a space of possible models. Exact designs are investigated for two applications, and their advantages over factorial and central composite designs are demonstrated. |
Identificador | |
Idioma(s) |
eng |
Publicador |
Amer Statistical Assoc |
Palavras-Chave | #binary response #D-optimality #logistic regression #robust design #simulation #Bayesian Experimental-design #Binary Data #Polynomial Regression #Robust #Construction #Existence #Optimum #Minimax #C1 #230203 Statistical Theory #780101 Mathematical sciences |
Tipo |
Journal Article |