Combinations of one-sided sequential probability ratio tests (SPRT's) are shown to be "nearly optimal" for problems involving a finite number of possible underlying distributions. Subject to error probability constraints, expected sample sizes (or weighted averages of them) are minimized to within o(1) asymptotically. For sequential decision problems, simple explicit procedures are proposed which "do exactly what a Bayes solution would do" with probability approaching one as the cost per observation, c, goes to zero. Exact computations for a binomial testing problem show that efficiencies of about 97% are obtained in some "small-sample" cases
Let X1, X2, ... be a discrete-time stochastic process with a distribution Pθ, θ ∈ Θ, where Θ is an o...
The sequential probability ratio test (SPRT) is a hypothesis testing procedure, which evaluates data...
We propose the weighted expected sample size (WESS) to evaluate the overall performance on the indif...
The problem of sequential testing of multiple hypotheses is considered, and two candidate sequential...
Sequential tests of separated hypotheses concerning the parameter θ of a Koopman-Darmois family are ...
The problem of detecting a Markov signal when a variable number of noisy measurements can be taken i...
summary:This work deals with a general problem of testing multiple hypotheses about the distribution...
AbstractA sequential test for the Behrens-Fisher problem is considered in this paper. A sequential p...
Consider the problem of sequentially testing the hypothesis that the mean of a normal distribution o...
In practice, most computers generate simulation outputs sequentially, so it is attractive to analyze...
The sequential probability ratio test is an efficient test procedure compared to the fixed sample si...
The problem of sequentially testing two simple hypotheses is considered for i.i.d. observations. We ...
The invariant sequential probability ratio test used in testing for a difference between the means o...
In this thesis, optimality results are presented for Bayesian problems of sequential hypothesis test...
In this paper we deal with the problem of sequential testing of multiple hypotheses. We are interest...
Let X1, X2, ... be a discrete-time stochastic process with a distribution Pθ, θ ∈ Θ, where Θ is an o...
The sequential probability ratio test (SPRT) is a hypothesis testing procedure, which evaluates data...
We propose the weighted expected sample size (WESS) to evaluate the overall performance on the indif...
The problem of sequential testing of multiple hypotheses is considered, and two candidate sequential...
Sequential tests of separated hypotheses concerning the parameter θ of a Koopman-Darmois family are ...
The problem of detecting a Markov signal when a variable number of noisy measurements can be taken i...
summary:This work deals with a general problem of testing multiple hypotheses about the distribution...
AbstractA sequential test for the Behrens-Fisher problem is considered in this paper. A sequential p...
Consider the problem of sequentially testing the hypothesis that the mean of a normal distribution o...
In practice, most computers generate simulation outputs sequentially, so it is attractive to analyze...
The sequential probability ratio test is an efficient test procedure compared to the fixed sample si...
The problem of sequentially testing two simple hypotheses is considered for i.i.d. observations. We ...
The invariant sequential probability ratio test used in testing for a difference between the means o...
In this thesis, optimality results are presented for Bayesian problems of sequential hypothesis test...
In this paper we deal with the problem of sequential testing of multiple hypotheses. We are interest...
Let X1, X2, ... be a discrete-time stochastic process with a distribution Pθ, θ ∈ Θ, where Θ is an o...
The sequential probability ratio test (SPRT) is a hypothesis testing procedure, which evaluates data...
We propose the weighted expected sample size (WESS) to evaluate the overall performance on the indif...