Journal Article10.1287/MOOR.15.1.1
Simulation Output Analysis Using Standardized Time Series
TL;DR: The goal in this paper is to generalize the STS method and to study some of its basic properties, finding a lower bound is obtained for the expected length of the asymptotic as the run size becomes large STS confidence intervals.
read more
Abstract: The method of standardized time series STS was proposed by Schruben as an approach for constructing asymptotic confidence intervals for the steady-state mean from a single simulation run. The STS method "cancels out" the variance constant while other methods attempt to consistently estimate the variance constant. Our goal in this paper is to generalize the STS method and to study some of its basic properties. Starting from a functional central limit theorem FCLT for the sample mean of the simulated process, a class of mappings of C[0,1] to ℝ is identified, each of which leads to a STS confidence interval. One of these mappings leads to the batch means method. A lower bound is obtained for the expected length of the asymptotic as the run size becomes large STS confidence intervals. This lower bound is not attained, but can be approached arbitrarily closely, by STS confidence intervals. Methods that consistently estimate the variance constant do realize this lower bound. The variance of the length of a STS confidence interval is of larger order in the run length than is that for the regenerative method.
read more
Chat with Paper
AI Agents for this Paper
Find similar papers on Google Scholar, PubMed and Arxiv
Write a critical review of this paper
Analyze citations of this paper to find unaddressed research gaps
Citations
Convergence of Probability Measures
TL;DR: Convergence of Probability Measures as mentioned in this paper is a well-known convergence of probability measures. But it does not consider the relationship between probability measures and the probability distribution of probabilities.
5.9K
Practical Markov Chain Monte Carlo
TL;DR: The case is made for basing all inference on one long run of the Markov chain and estimating the Monte Carlo error by standard nonparametric methods well-known in the time-series and operations research literature.
2.3K
Honest Exploration of Intractable Probability Distributions via Markov Chain Monte Carlo
Galin L. Jones,James P. Hobert +1 more
TL;DR: In this article, the authors use drift and minorization conditions to construct a formula giving an analytic upper bound on the distance to stationarity, which can be used to answer questions such as what is an appropriate burn-in? and how long should the sampling continue after burnin.
Markov chain Monte Carlo: Can we trust the third significant figure?
TL;DR: Why Monte Carlo standard errors are important, how they can be easily calculated in Markov chain Monte Carlo and how they are used to decide when to stop the simulation are discussed.
Multivariate output analysis for Markov chain Monte Carlo
TL;DR: In this paper, a multivariate framework for terminating simulation in MCMC is presented, which requires strongly consistent estimators of the covariance matrix in the Markov chain central limit theorem (CLT), and a lower bound on the number of minimum effective samples required for a desired level of precision.
316
References
•Book
Convergence of Probability Measures
Patrick Billingsley
- 01 Jan 1968
TL;DR: Weak Convergence in Metric Spaces as discussed by the authors is one of the most common modes of convergence in metric spaces, and it can be seen as a form of weak convergence in metric space.
15K
Convergence of Probability Measures
TL;DR: Convergence of Probability Measures as mentioned in this paper is a well-known convergence of probability measures. But it does not consider the relationship between probability measures and the probability distribution of probabilities.
5.9K
•Book
Martingale Limit Theory and Its Application
Peter Hall,E Lukacs,Z W Birnbaum,C. C. Heyde +3 more
- 23 Sep 2014
4K
•Book
A course in probability theory
Kai Lai Chung
- 01 Jan 2001
TL;DR: This edition of A Course in Probability Theory includes an introduction to measure theory that expands the market, as this treatment is more consistent with current courses.
3.1K