With the increase in computing power and software engineering in the past years computer based stochastic discrete-event simulations have become very commonly used tool to evaluate performance of various, complex stochastic systems (such as telecommunication networks). It is used if analytical methods are too complex to solve, or cannot be used at all. Stochastic simulation has also become a tool, which is often used instead of experimentation in order to save money and time by the researchers. In this thesis, we focus on the statistical correctness of the final estimated results in the context of steady-state simulations performed for the mean analysis of performance measures of stable stochastic processes. Due to various approximations th...
Discrete event simulation is well known to be a powerful approach to investigate behaviour of comple...
Approaches like finite differences with common random numbers, infinitesimal perturbation analysis, ...
Simulation output analysis involves two major problems: point estimation and standard-error estimati...
With the increase in computing power and software engineering in the past years computer based stoch...
With the increase in computing power and software engineering in the past years computer based stoch...
The credibility of the final results from stochastic simulation has had limited discussion in the si...
For years computer-based stochastic simulation has been a commonly used tool in the performance eval...
[[abstract]]The estimation of the variance of point estimators is a classical problem of stochastic ...
We present a new method for obtaining confidence intervals in steady-state simulation. In our replic...
Sequential analysis of output data during stochastic discrete-event simulation is a very effective p...
[[abstract]]© 2010 Elsevier - Estimating the variance of the sample mean from a stochastic process i...
The goal of steady-state simulation is often to obtain point and interval estimators for a steady-st...
Regenerative simulation (RS) is a method of stochastic steady-state simulation in which output data ...
We develop theory and methodology to estimate the variance of the sample mean of general steady-stat...
Sequential analysis of simulation output is generally accepted as the most efficient way for securi...
Discrete event simulation is well known to be a powerful approach to investigate behaviour of comple...
Approaches like finite differences with common random numbers, infinitesimal perturbation analysis, ...
Simulation output analysis involves two major problems: point estimation and standard-error estimati...
With the increase in computing power and software engineering in the past years computer based stoch...
With the increase in computing power and software engineering in the past years computer based stoch...
The credibility of the final results from stochastic simulation has had limited discussion in the si...
For years computer-based stochastic simulation has been a commonly used tool in the performance eval...
[[abstract]]The estimation of the variance of point estimators is a classical problem of stochastic ...
We present a new method for obtaining confidence intervals in steady-state simulation. In our replic...
Sequential analysis of output data during stochastic discrete-event simulation is a very effective p...
[[abstract]]© 2010 Elsevier - Estimating the variance of the sample mean from a stochastic process i...
The goal of steady-state simulation is often to obtain point and interval estimators for a steady-st...
Regenerative simulation (RS) is a method of stochastic steady-state simulation in which output data ...
We develop theory and methodology to estimate the variance of the sample mean of general steady-stat...
Sequential analysis of simulation output is generally accepted as the most efficient way for securi...
Discrete event simulation is well known to be a powerful approach to investigate behaviour of comple...
Approaches like finite differences with common random numbers, infinitesimal perturbation analysis, ...
Simulation output analysis involves two major problems: point estimation and standard-error estimati...