Sequential sampling problems arise in stochastic simulation and many other applications. Sampling is usedto infer the unknown performance of several alternatives before one alternative is selected as best. This paper presents new economically motivated fully sequential sampling procedures to solve such problems, called economics of selection procedures. The optimal procedure is derived for comparing a known standard with one alternative whose unknown reward is inferred with sampling. That result motivates heuristics when multiple alternatives have unknown rewards. The resulting procedures are more effective in numerical experiments than any previously proposed procedure of which we are aware and are easily implemented. The key driver of the...
In this paper we proposed a dynamic programming procedure to develop an optimal sequential sampling ...
We present a Bayesian sequential sampling model in which a researcher has flexibility over the timin...
The thesis deals with binomial and multinomial sequential selection problems. Optimal sequential sam...
We consider the Bayesian formulation of a number of learning problems, where we focus on sequential ...
We consider the Bayesian formulation of a number of learning problems, where we focus on sequential ...
Statistical selection procedures can identify the best of a finite set of alternatives, where “best ...
We consider the problem of selecting the best of a finite but very large set of alternatives. Each a...
Statistical ranking and selection (R&S) is a collection of experiment design and analysis techniques...
Ranking and selection procedures are standard methods for selecting the best of a finite number of s...
We develop a sequential sampling procedure for a class of stochastic programs. We assume that a sequ...
Abstract. We consider Bayesian information collection, in which a measurement policy collects inform...
Sequential decision problems are often ap-proximately solvable by simulating possible future action ...
Fully sequential selection procedures have been developed in the field of stochastic simulation to f...
Statistical ranking and selection (R&S) is a collection of experiment design and analysis techniques...
In this paper we proposed a dynamic programming procedure to develop an optimal sequential sampling ...
In this paper we proposed a dynamic programming procedure to develop an optimal sequential sampling ...
We present a Bayesian sequential sampling model in which a researcher has flexibility over the timin...
The thesis deals with binomial and multinomial sequential selection problems. Optimal sequential sam...
We consider the Bayesian formulation of a number of learning problems, where we focus on sequential ...
We consider the Bayesian formulation of a number of learning problems, where we focus on sequential ...
Statistical selection procedures can identify the best of a finite set of alternatives, where “best ...
We consider the problem of selecting the best of a finite but very large set of alternatives. Each a...
Statistical ranking and selection (R&S) is a collection of experiment design and analysis techniques...
Ranking and selection procedures are standard methods for selecting the best of a finite number of s...
We develop a sequential sampling procedure for a class of stochastic programs. We assume that a sequ...
Abstract. We consider Bayesian information collection, in which a measurement policy collects inform...
Sequential decision problems are often ap-proximately solvable by simulating possible future action ...
Fully sequential selection procedures have been developed in the field of stochastic simulation to f...
Statistical ranking and selection (R&S) is a collection of experiment design and analysis techniques...
In this paper we proposed a dynamic programming procedure to develop an optimal sequential sampling ...
In this paper we proposed a dynamic programming procedure to develop an optimal sequential sampling ...
We present a Bayesian sequential sampling model in which a researcher has flexibility over the timin...
The thesis deals with binomial and multinomial sequential selection problems. Optimal sequential sam...