We consider subset selection problems in ranking and selection with tight computational budgets. We develop a new procedure that selects the best m out of k stochastic systems. Previous approaches have focused on individually separating out the top m from all the systems being considered. We reformulate the problem by casting all m-sized subsets of the k systems as the alternatives of the selection problem. This reformulation enables our derivation to follow along traditional ranking and selection frameworks. In particular, we extend the value of information procedure to subset selection. Furthermore, unlike previous subset selection efforts, we use an expected opportunity cost (EOC) loss function as evidence for correct selection. In minim...
Selection procedures are used in many applications to select the best of a finite set of alternative...
Statistical ranking and selection (R&S) is a collection of experiment design and analysis techniques...
We consider an expected-value ranking and selection problem where all k solutions' simulation output...
We consider a class of the subset selection problem in ranking and selection. The objective is to id...
Constrained ranking and selection (R&S) refers to the problem of selecting the best feasible des...
Selecting a subset of the best solutions among large-scale problems is an important area of research...
In this paper we address the problem of finding the simulated system with the best (maximum or minim...
In this paper we address the problem of finding the simulated system with the best (maximum or minim...
[[abstract]]In this paper, we address the problem of finding the simulated system with the best (max...
Statistical selection procedures are used to select the best simulated system from a finite set of a...
Simulation is widely used to identify the best of a finite set of proposed systems, where 'best' is ...
We describe the basic principles of ranking and selection, a collection of experiment-design techniq...
Ranking and selection procedures are standard methods for selecting the best of a finite number of s...
In many real-world applications, designs can only be evaluated pairwise, relative to each other. Nev...
In this tutorial we consider the problem of finding the best set up to use for a system, where the o...
Selection procedures are used in many applications to select the best of a finite set of alternative...
Statistical ranking and selection (R&S) is a collection of experiment design and analysis techniques...
We consider an expected-value ranking and selection problem where all k solutions' simulation output...
We consider a class of the subset selection problem in ranking and selection. The objective is to id...
Constrained ranking and selection (R&S) refers to the problem of selecting the best feasible des...
Selecting a subset of the best solutions among large-scale problems is an important area of research...
In this paper we address the problem of finding the simulated system with the best (maximum or minim...
In this paper we address the problem of finding the simulated system with the best (maximum or minim...
[[abstract]]In this paper, we address the problem of finding the simulated system with the best (max...
Statistical selection procedures are used to select the best simulated system from a finite set of a...
Simulation is widely used to identify the best of a finite set of proposed systems, where 'best' is ...
We describe the basic principles of ranking and selection, a collection of experiment-design techniq...
Ranking and selection procedures are standard methods for selecting the best of a finite number of s...
In many real-world applications, designs can only be evaluated pairwise, relative to each other. Nev...
In this tutorial we consider the problem of finding the best set up to use for a system, where the o...
Selection procedures are used in many applications to select the best of a finite set of alternative...
Statistical ranking and selection (R&S) is a collection of experiment design and analysis techniques...
We consider an expected-value ranking and selection problem where all k solutions' simulation output...