The path of steepest ascent can used to optimize a response in an experiment, but problems can occur with multiple responses. Past approaches to this issue such as Del Castillo’s overlap of confidence cones and Mee and Xiao’s Pareto Optimality, have not considered the correlations of the responses or parameter uncertainty. We propose a new method using the Bayesian reliability to calculate this direction. We utilize this method with four examples: a 2 factor, 2-response experiment where the paths of steepest ascent are similar, ensuring our results match Del Castillo’s and Mee and Xiao’s; a 2 factor, 2-response experiment with disparate paths of steepest ascent illustrating the importance of the Bayesian reliability; two simulation examp...
In this paper, we consider a multivariate hypergeometric population with k-category [pi] = [pi](N, M...
It is extremely frequent for systems to fail in their demanding operating environments in many real-...
Abstract: Hierarchical or multilevel modeling establishes a convenient framework for solving complex...
This thesis provides some extensions to the existing method of determining the precision of the path...
Structural reliability analysis is concerned with estimation of the probability of a critical event ...
A limitation of reliability approach to slope safety has been that reliability evaluation yields onl...
Across the sciences, social sciences and engineering, applied statisticians seek to build understand...
Global reliability sensitivity analysis determines the effects of input uncertain parameters on the ...
This paper develops a methodology for robust Bayesian inference through the use of disparities. Met-...
A simple multiresponse steepest ascent procedure has been developed by combining the standard steepe...
There are many types of problems that include variables that are not well defined. Seeking answers t...
We consider the estimation of return values in the presence of uncertain extreme value model paramet...
Two major approaches have developed within Bayesian statistics to address uncertainty in the prior d...
Popular measures of reliability for a single-test administration include coefficient α, coefficient ...
We consider an unknown multivariate function representing a system-such as a complex numerical simul...
In this paper, we consider a multivariate hypergeometric population with k-category [pi] = [pi](N, M...
It is extremely frequent for systems to fail in their demanding operating environments in many real-...
Abstract: Hierarchical or multilevel modeling establishes a convenient framework for solving complex...
This thesis provides some extensions to the existing method of determining the precision of the path...
Structural reliability analysis is concerned with estimation of the probability of a critical event ...
A limitation of reliability approach to slope safety has been that reliability evaluation yields onl...
Across the sciences, social sciences and engineering, applied statisticians seek to build understand...
Global reliability sensitivity analysis determines the effects of input uncertain parameters on the ...
This paper develops a methodology for robust Bayesian inference through the use of disparities. Met-...
A simple multiresponse steepest ascent procedure has been developed by combining the standard steepe...
There are many types of problems that include variables that are not well defined. Seeking answers t...
We consider the estimation of return values in the presence of uncertain extreme value model paramet...
Two major approaches have developed within Bayesian statistics to address uncertainty in the prior d...
Popular measures of reliability for a single-test administration include coefficient α, coefficient ...
We consider an unknown multivariate function representing a system-such as a complex numerical simul...
In this paper, we consider a multivariate hypergeometric population with k-category [pi] = [pi](N, M...
It is extremely frequent for systems to fail in their demanding operating environments in many real-...
Abstract: Hierarchical or multilevel modeling establishes a convenient framework for solving complex...