Data truncation is a commonly accepted method of dealing with initialization bias in discrete-event simulation. An algorithm for determining the appropriate initial-data truncation point for univariate output is proposed. The technique entails averaging across independent replications and estimating a steady-state output model in a state-space framework. A Bayesian technique called Multiple Model Adaptive Estimation (MMAE) is applied to compute a time varying estimate of the output's steady-state mean. This MMAE implementation features the use, in parallel, of a bank of three Kalman filters. Each filter is constructed under a different assumption about the output's steady-state mean. One of the filters assumes that the steady-state mean is ...
Many exact Markov chain Monte Carlo algorithms have been developed for posterior inference in Bayesi...
In steady-state simulation the output data of the transient phase often causes a bias in the estimat...
A new multi-level Markov chain Monte Carlo algorithm for Bayesian inference, ABC-SubSim, has recentl...
In quantitative discrete-event simulation, the initial transient phase can cause bias in the estimat...
This paper develops a novel sequential Monte Carlo (SMC) approach for joint state and parameter esti...
The goal of steady-state simulation is often to obtain point and interval estimators for a steady-st...
Simulation smoothing involves drawing state variables (or innovations) in discrete time state-space ...
Abstract: Inference using simulation has become a dominant theme in modern statistics, whether using...
This paper develops a simulation-based approach to sequential parameter learning and filtering in ge...
The focus of this research is to provide methods for generating precise parameter estimates in the f...
Sequential analysis of output data during stochastic discrete-event simulation is a very effective p...
For sequential output data analysis in non-terminating discrete-event simulation, we consider three ...
The application of the correct simulation output analysis technique requires a knowledgge of the mod...
Abstract — Adaptive filtering is normally utilized to estimate system states or outputs from continu...
Input model bias is the bias found in the output performance measures of a simulation model caused b...
Many exact Markov chain Monte Carlo algorithms have been developed for posterior inference in Bayesi...
In steady-state simulation the output data of the transient phase often causes a bias in the estimat...
A new multi-level Markov chain Monte Carlo algorithm for Bayesian inference, ABC-SubSim, has recentl...
In quantitative discrete-event simulation, the initial transient phase can cause bias in the estimat...
This paper develops a novel sequential Monte Carlo (SMC) approach for joint state and parameter esti...
The goal of steady-state simulation is often to obtain point and interval estimators for a steady-st...
Simulation smoothing involves drawing state variables (or innovations) in discrete time state-space ...
Abstract: Inference using simulation has become a dominant theme in modern statistics, whether using...
This paper develops a simulation-based approach to sequential parameter learning and filtering in ge...
The focus of this research is to provide methods for generating precise parameter estimates in the f...
Sequential analysis of output data during stochastic discrete-event simulation is a very effective p...
For sequential output data analysis in non-terminating discrete-event simulation, we consider three ...
The application of the correct simulation output analysis technique requires a knowledgge of the mod...
Abstract — Adaptive filtering is normally utilized to estimate system states or outputs from continu...
Input model bias is the bias found in the output performance measures of a simulation model caused b...
Many exact Markov chain Monte Carlo algorithms have been developed for posterior inference in Bayesi...
In steady-state simulation the output data of the transient phase often causes a bias in the estimat...
A new multi-level Markov chain Monte Carlo algorithm for Bayesian inference, ABC-SubSim, has recentl...