We propose SPSTS, an automated sequential procedure for computing point and confidence-interval (CI) estimators for the steady-state mean of a simulation output process. This procedure is based on variance estimators computed from standardized time series, and it is characterized by its simplicity relative to methods based on batch means and its ability to deliver CIs for the variance parameter of the output process. The effectiveness of SPSTS is evaluated via comparisons with methods based on batch means. In preliminary experimentation with the steady-state waiting-time process for the M/M/1 queue with a server utilization of 90%, we found that SPSTS performed comparatively well in terms of its average required sample size as well as the c...
On-line analysis of output data from discrete event stochastic simulation focuses almost entirely on...
As an advanced tutorial, we discuss batching meth-ods for determining point-estimator precision for ...
[[abstract]]© 2010 Elsevier - Estimating the variance of the sample mean from a stochastic process i...
For sequential output data analysis in non-terminating discrete-event simulation, we consider three ...
We present a new method for obtaining confidence intervals in steady-state simulation. In our replic...
TR-COSC 03/08Today, many studies of communication networks rely on simulation conducted to assess th...
Weighted batch means is a new procedure for constructing a confidence interval on the mean of a stea...
Sequential analysis of simulation output is generally accepted as the most efficient way for securi...
The credibility of the final results from stochastic simulation has had limited discussion in the si...
[[abstract]]© 1996 Institute of Electrical and Electronics Engineers - As an advanced tutorial, we d...
Most of steady state simulation outputs are characterized by some degree of dependency between succe...
In this dissertation, we consider analytic and numeric approaches to the solution of probabilistic s...
Schruben (1983) developed standardized time series (STS) methods to construct confidence intervals (...
[[abstract]]The estimation of the variance of point estimators is a classical problem of stochastic ...
We develop theory and methodology to estimate the variance of the sample mean of general steady-stat...
On-line analysis of output data from discrete event stochastic simulation focuses almost entirely on...
As an advanced tutorial, we discuss batching meth-ods for determining point-estimator precision for ...
[[abstract]]© 2010 Elsevier - Estimating the variance of the sample mean from a stochastic process i...
For sequential output data analysis in non-terminating discrete-event simulation, we consider three ...
We present a new method for obtaining confidence intervals in steady-state simulation. In our replic...
TR-COSC 03/08Today, many studies of communication networks rely on simulation conducted to assess th...
Weighted batch means is a new procedure for constructing a confidence interval on the mean of a stea...
Sequential analysis of simulation output is generally accepted as the most efficient way for securi...
The credibility of the final results from stochastic simulation has had limited discussion in the si...
[[abstract]]© 1996 Institute of Electrical and Electronics Engineers - As an advanced tutorial, we d...
Most of steady state simulation outputs are characterized by some degree of dependency between succe...
In this dissertation, we consider analytic and numeric approaches to the solution of probabilistic s...
Schruben (1983) developed standardized time series (STS) methods to construct confidence intervals (...
[[abstract]]The estimation of the variance of point estimators is a classical problem of stochastic ...
We develop theory and methodology to estimate the variance of the sample mean of general steady-stat...
On-line analysis of output data from discrete event stochastic simulation focuses almost entirely on...
As an advanced tutorial, we discuss batching meth-ods for determining point-estimator precision for ...
[[abstract]]© 2010 Elsevier - Estimating the variance of the sample mean from a stochastic process i...