abstract: Optimal design theory provides a general framework for the construction of experimental designs for categorical responses. For a binary response, where the possible result is one of two outcomes, the logistic regression model is widely used to relate a set of experimental factors with the probability of a positive (or negative) outcome. This research investigates and proposes alternative designs to alleviate the problem of separation in small-sample D-optimal designs for the logistic regression model. Separation causes the non-existence of maximum likelihood parameter estimates and presents a serious problem for model fitting purposes. First, it is shown that exact, multi-factor D-optimal designs for the logistic regression mo...
When experiments are designed, it is uncommon to use criteria to determine the treatments and number...
D- and DA-optimal designs are investigated for a model where the response is a mixture of zero and a...
abstract: This study concerns optimal designs for experiments where responses consist of both binary...
In this paper we develop a sequential procedure to approach the D-optimal design given a logistic re...
abstract: Mixture experiments are useful when the interest is in determining how changes in the prop...
The main subject of this thesis concerns the optimum design of experiments for discriminating betwee...
The Bayesian design approach accounts for uncertainty of the parameter values on which optimal desig...
Finding optimal designs for experiments for non-linear models and dependent data is a challenging ta...
For the binary response model, we determine optimal designs based on the D-optimal criterion which a...
abstract: Generalized Linear Models (GLMs) are widely used for modeling responses with non-normal er...
Bayesian optimal designs for binary longitudinal responses analyzed with mixed logistic regression d...
Alphabetic optimal design theory assumes that the model for which the optimal design is derived is u...
Alphabetic optimal design theory assumes that the model for which the optimal design is derived is u...
abstract: Optimal experimental design for generalized linear models is often done using a pseudo-Bay...
Logistic regression is one of the most popular techniques used to describe the relationship between ...
When experiments are designed, it is uncommon to use criteria to determine the treatments and number...
D- and DA-optimal designs are investigated for a model where the response is a mixture of zero and a...
abstract: This study concerns optimal designs for experiments where responses consist of both binary...
In this paper we develop a sequential procedure to approach the D-optimal design given a logistic re...
abstract: Mixture experiments are useful when the interest is in determining how changes in the prop...
The main subject of this thesis concerns the optimum design of experiments for discriminating betwee...
The Bayesian design approach accounts for uncertainty of the parameter values on which optimal desig...
Finding optimal designs for experiments for non-linear models and dependent data is a challenging ta...
For the binary response model, we determine optimal designs based on the D-optimal criterion which a...
abstract: Generalized Linear Models (GLMs) are widely used for modeling responses with non-normal er...
Bayesian optimal designs for binary longitudinal responses analyzed with mixed logistic regression d...
Alphabetic optimal design theory assumes that the model for which the optimal design is derived is u...
Alphabetic optimal design theory assumes that the model for which the optimal design is derived is u...
abstract: Optimal experimental design for generalized linear models is often done using a pseudo-Bay...
Logistic regression is one of the most popular techniques used to describe the relationship between ...
When experiments are designed, it is uncommon to use criteria to determine the treatments and number...
D- and DA-optimal designs are investigated for a model where the response is a mixture of zero and a...
abstract: This study concerns optimal designs for experiments where responses consist of both binary...