Choosing between competing models lies at the heart of scientific work, and is a frequent motivation for experimentation. Optimal experimental design (OD) methods maximize the benefit of experiments towards a specified goal. We advance and demonstrate an OD approach to maximize the information gained towards model selection. We make use of so-called model choice indicators, which are random variables with an expected value equal to Bayesian model weights. Their uncertainty can be measured with Shannon entropy. Since the experimental data are still random variables in the planning phase of an experiment, we use mutual information (the expected reduction in Shannon entropy) to quantify the information gained from a proposed experimental desig...
This paper presents a generic methodology for measurement system configuration when the goal is to i...
We explore the use of different strategies for the construction of optimal choice experiments and th...
We develop a method for finding optimal designs in discrete choice experiments (DCEs). More specific...
Choosing between competing models lies at the heart of scientific work, and is a frequent motivation...
When Shannon entropy is used as a criterion in the optimal design of experiments, advantage can be t...
© 2015. American Geophysical Union. All Rights Reserved. Experimental design and data collection con...
An important concern in the design of validation experiments is how to incorporate the mathematical ...
It often occurs that a system can be described by several competing models. In order to distinguish ...
In this work, we present a minimum entropy analysis scheme for variable selection and preliminary da...
The most widely used forms of model selection criteria, the Bayesian Information Criterion (BIC) an...
Mathematical modelling Optimal experimental design ma vail sed Therefore, model discrimination may b...
This dissertation explores the use of Shannon’s entropy and mutual information to quantify uncertain...
The total entropy utility function is considered for the dual purpose of Bayesian design for model d...
Theoretical and computational issues arising in experimental design for model identification and par...
One goal of experimentation is to identify which design parameters most significantly influence the ...
This paper presents a generic methodology for measurement system configuration when the goal is to i...
We explore the use of different strategies for the construction of optimal choice experiments and th...
We develop a method for finding optimal designs in discrete choice experiments (DCEs). More specific...
Choosing between competing models lies at the heart of scientific work, and is a frequent motivation...
When Shannon entropy is used as a criterion in the optimal design of experiments, advantage can be t...
© 2015. American Geophysical Union. All Rights Reserved. Experimental design and data collection con...
An important concern in the design of validation experiments is how to incorporate the mathematical ...
It often occurs that a system can be described by several competing models. In order to distinguish ...
In this work, we present a minimum entropy analysis scheme for variable selection and preliminary da...
The most widely used forms of model selection criteria, the Bayesian Information Criterion (BIC) an...
Mathematical modelling Optimal experimental design ma vail sed Therefore, model discrimination may b...
This dissertation explores the use of Shannon’s entropy and mutual information to quantify uncertain...
The total entropy utility function is considered for the dual purpose of Bayesian design for model d...
Theoretical and computational issues arising in experimental design for model identification and par...
One goal of experimentation is to identify which design parameters most significantly influence the ...
This paper presents a generic methodology for measurement system configuration when the goal is to i...
We explore the use of different strategies for the construction of optimal choice experiments and th...
We develop a method for finding optimal designs in discrete choice experiments (DCEs). More specific...