Tutorial: Input uncertainty in outout analysis
RR Barton - Proceedings of the 2012 Winter Simulation …, 2012 - ieeexplore.ieee.org
Simulation output clearly depends on the form of the input distributions used to drive the
model. Often these input distributions are fitted using finite samples of real-world data. The …
model. Often these input distributions are fitted using finite samples of real-world data. The …
[HTML][HTML] Stochastic simulation under input uncertainty: A review
Stochastic simulation is an invaluable tool for operations-research practitioners for the
performance evaluation of systems with random behavior and mathematically intractable …
performance evaluation of systems with random behavior and mathematically intractable …
Simulation budget allocation for further enhancing the efficiency of ordinal optimization
Ordinal Optimization has emerged as an efficient technique for simulation and optimization.
Exponential convergence rates can be achieved in many cases. In this paper, we present a …
Exponential convergence rates can be achieved in many cases. In this paper, we present a …
Kriging interpolation in simulation: a survey
WCM Van Beers, JPC Kleijnen - Proceedings of the 2004 …, 2004 - ieeexplore.ieee.org
Many simulation experiments require much computer time, so they necessitate interpolation
for sensitivity analysis and optimization. The interpolating functions are'metamodels'(or' …
for sensitivity analysis and optimization. The interpolating functions are'metamodels'(or' …
Quantifying input uncertainty via simulation confidence intervals
We consider the problem of deriving confidence intervals for the mean response of a system
that is represented by a stochastic simulation whose parametric input models have been …
that is represented by a stochastic simulation whose parametric input models have been …
A Bayesian framework for quantifying uncertainty in stochastic simulation
When we use simulation to estimate the performance of a stochastic system, the simulation
often contains input models that were estimated from real-world data; therefore, there is both …
often contains input models that were estimated from real-world data; therefore, there is both …
[LLIBRE][B] Risk analysis of complex and uncertain systems
LA Cox Jr - 2009 - books.google.com
In Risk Analysis of Complex and Uncertain Systems acknowledged risk authority Tony Cox
shows all risk practitioners how Quantitative Risk Assessment (QRA) can be used to improve …
shows all risk practitioners how Quantitative Risk Assessment (QRA) can be used to improve …
Subjective probability and Bayesian methodology
SE Chick - Handbooks in Operations Research and Management …, 2006 - Elsevier
Subjective probability and Bayesian methods provide a unified approach to handle not only
randomness from stochastic sample-paths, but also uncertainty about input parameters and …
randomness from stochastic sample-paths, but also uncertainty about input parameters and …
Speaking the truth in maritime risk assessment
Several major risk studies have been performed in recent years in the maritime
transportation domain. These studies have had significant impact on management practices …
transportation domain. These studies have had significant impact on management practices …
Computing efforts allocation for ordinal optimization and discrete event simulation
HC Chen, CH Chen, E Yucesan - IEEE Transactions on …, 2000 - ieeexplore.ieee.org
Ordinal optimization has emerged as an efficient technique for simulation and optimization.
Exponential convergence rates can be achieved in many cases. In this paper, we present a …
Exponential convergence rates can be achieved in many cases. In this paper, we present a …