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Discrepancy estimates for variance bounding Markov chain quasi-Monte Carlo


 
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1. Title Title of document Discrepancy estimates for variance bounding Markov chain quasi-Monte Carlo
 
2. Creator Author's name, affiliation, country Josef Dick; The Univesity of New South Wales; Australia
 
2. Creator Author's name, affiliation, country Daniel Rudolf; Friedrich Schiller University of Jena; Germany
 
3. Subject Discipline(s)
 
3. Subject Keyword(s) Markov chain Monte Carlo ; Markov chain quasi-Monte Carlo ; variance bounding ; discrepancy theory ; spectral gap ; probabilistic method
 
3. Subject Subject classification 60J22; 65C40; 62F15; 65C05; 60J05
 
4. Description Abstract Markov chain Monte Carlo (MCMC) simulations are modeled as driven by true random numbers. We consider variance bounding Markov chains driven by a deterministic sequence of numbers. The star-discrepancy provides a measure of efficiency of such Markov chain quasi-Monte Carlo methods. We define a pull-back discrepancy of the driver sequence and state a close relation to the star-discrepancy of the Markov chain-quasi Monte Carlo samples. We prove that there exists a deterministic driver sequence such that the discrepancies decrease almost with the Monte Carlo rate $n^{-1/2}$. As for MCMC simulations,  a burn-in period can also be taken into account for Markov chain quasi-Monte Carlo to reduce the influence of the initial state. In particular, our discrepancy bound leads to an estimate of the error for the computation of expectations. To illustrate our theory we provide an example for the Metropolis algorithm based on a ball walk. Furthermore, under additional assumptions we prove the existence of a driver sequence such that the discrepancy of the corresponding deterministic Markov chain sample decreases with order $n^{-1+\delta}$ for every $\delta>0$.
 
5. Publisher Organizing agency, location
 
6. Contributor Sponsor(s) Australian Research Council, DFG
 
7. Date (YYYY-MM-DD) 2014-11-05
 
8. Type Status & genre Peer-reviewed Article
 
8. Type Type
 
9. Format File format PDF
 
10. Identifier Uniform Resource Identifier http://ejp.ejpecp.org/article/view/3132
 
10. Identifier Digital Object Identifier 10.1214/EJP.v19-3132
 
11. Source Journal/conference title; vol., no. (year) Electronic Journal of Probability; Vol 19
 
12. Language English=en en
 
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