We consider the setting of estimating the mean of a random variable by a sequential stopping rule Monte Carlo (MC) method. The performance of a typical second moment based sequential stopping rule MC method is shown to be unreliable in such settings both by numerical examples and through analysis. By analysis and approximations, we construct a higher moment based stopping rule which is shown in numerical examples to perform more reliably and only slightly less efficiently than the second moment based stopping rule
Motivated by the statistical inference problem in population genetics, we present a new sequential i...
Markov chain Monte Carlo (MCMC) simulations are commonly employed for estimating features of a targe...
We introduce new variants of classical regression-based algorithms for optimal stopping problems bas...
We consider the setting of estimating the mean of a random variable by a sequential stopping rule Mo...
We consider the setting of estimating the mean of a random variable by a sequential stopping rule Mo...
We consider the setting of estimating the mean of a random variable by a sequential stopping rule Mo...
Abstract. We consider the setting of estimating the mean of a random variable by a sequential stoppi...
In this paper, a sequential stopping rule for the estimation of a probability p by means of Monte Ca...
Markov chain Monte Carlo (MCMC) simulations are commonly employed for es-timating features of a targ...
Abstract: Markov chain Monte Carlo (MCMC) simulations are commonly employed for estimating features ...
In this paper we study randomized optimal stopping problems and consider corresponding forward and b...
AbstractMinimax-optimal stopping times and minimax (worst-case) distributions are found for the prob...
In this paper we study simulation-based optimization algorithms for solving discrete time optimal st...
In this paper we study simulation-based optimization algorithms for solving discrete time optimal st...
University of Minnesota Ph.D. dissertation. February 2017. Major: Statistics. Advisor: Galin Jones....
Motivated by the statistical inference problem in population genetics, we present a new sequential i...
Markov chain Monte Carlo (MCMC) simulations are commonly employed for estimating features of a targe...
We introduce new variants of classical regression-based algorithms for optimal stopping problems bas...
We consider the setting of estimating the mean of a random variable by a sequential stopping rule Mo...
We consider the setting of estimating the mean of a random variable by a sequential stopping rule Mo...
We consider the setting of estimating the mean of a random variable by a sequential stopping rule Mo...
Abstract. We consider the setting of estimating the mean of a random variable by a sequential stoppi...
In this paper, a sequential stopping rule for the estimation of a probability p by means of Monte Ca...
Markov chain Monte Carlo (MCMC) simulations are commonly employed for es-timating features of a targ...
Abstract: Markov chain Monte Carlo (MCMC) simulations are commonly employed for estimating features ...
In this paper we study randomized optimal stopping problems and consider corresponding forward and b...
AbstractMinimax-optimal stopping times and minimax (worst-case) distributions are found for the prob...
In this paper we study simulation-based optimization algorithms for solving discrete time optimal st...
In this paper we study simulation-based optimization algorithms for solving discrete time optimal st...
University of Minnesota Ph.D. dissertation. February 2017. Major: Statistics. Advisor: Galin Jones....
Motivated by the statistical inference problem in population genetics, we present a new sequential i...
Markov chain Monte Carlo (MCMC) simulations are commonly employed for estimating features of a targe...
We introduce new variants of classical regression-based algorithms for optimal stopping problems bas...