English
Related papers

Related papers: Imprecise Continuous-Time Markov Chains: Efficient…

200 papers

In this paper we investigate the continuum limits of a class of Markov chains. The investigation of such limits is motivated by the desire to model very large networks. We show that under some conditions, a sequence of Markov chains…

Networking and Internet Architecture · Computer Science 2011-06-22 Yang Zhang , Edwin K. P. Chong , Jan Hannig , Donald Estep

The Markov chain approximation of a one-dimensional symmetric diffusion is investigated in this paper. Given an irreducible reflecting diffusion on a closed interval with scale function $s$ and speed measure $m$, the approximating Markov…

Probability · Mathematics 2020-04-16 Xiaodan Li , Jiangang Ying

We construct a new framework for accelerating Markov chain Monte Carlo in posterior sampling problems where standard methods are limited by the computational cost of the likelihood, or of numerical models embedded therein. Our approach…

Methodology · Statistics 2017-01-06 Patrick R. Conrad , Youssef M. Marzouk , Natesh S. Pillai , Aaron Smith

We formulate some simple conditions under which a Markov chain may be approximated by the solution to a differential equation, with quantifiable error probabilities. The role of a choice of coordinate functions for the Markov chain is…

Probability · Mathematics 2008-04-23 R. W. R. Darling , J. R. Norris

Inter-channel mis-synchronisation can be a limiting factor to the time resolution of high performance timing detectors with multiple readout channels and independent electronics units. In these systems, time calibration methods employed…

Instrumentation and Detectors · Physics 2026-03-03 S. Abe , H. Alarakia-Charles , I. Alekseev , C. Alt , T. Arai , T. Arihara , S. Arimoto , A. M. Artikov , Y. Awataguchi , N. Babu , V. Baranov , G. Barr , D. Barrow , L. Bartoszek , L. Bernardi , L. Berns , S. Bhattacharjee , A. V. Boikov , A. Blanchet , A. Blondel , A. Bonnemaison , S. Bordoni , M. H. Bui , T. H. Bui , F. Cadoux , S. Cap , A. Cauchois , J. Chakrani , P. S. Chong , A. Chvirova , P. Collard , M. Danilov , C. Davis , V. Davouloury , Yu. I. Davydov , A. Dergacheva , C. Domangue , D. Douqa , T. A. Doyle , O. Drapier , A. Eguchi , J. Elias , G. Erofeev , Y. Favre , D. Fedorova , S. Fedotov , D. Ferlewicz , Y. Fujii , R. Fujita , Y. Furui , F. Gastaldi , A. Gendotti , A. Germer , L. Giannessi , C. Giganti , V. Glagolev , R. Guillaumat , G. Ha , N. C. Hastings , I. Heitkamp , J. Hu , C. Husi , A. K. Ichikawa , T. H. Ishida , A. Izmaylov , K. Iwamoto , M. Jakkapu , C. Jesús-Valls , J. Y. Ji , P. Jonsson , C. K. Jung , H. Kakuno , V. S. Kasturi , M. Kawaue , P. T. Keener , M. Khabibullin , N. V. Khomutov , A. Khotjantsev , T. Kikawa , H. Kikutani , N. V. Kirichkov , A. Klustová , H. Kobayashi , T. Kobayashi , L. Koch , S. Kodama , A. O. Kolesnikov , M. Kolupanova , A. Korzenev , T. Koto , Y. Kudenko , S. Kuribayashi , T. Kutter , M. Lachat , K. Lachner , M. Lamers James , D. Last , N. Latham , M. Lawe , T. A. Le , D. Leon Silverio , B. Li , W. Li , C. Lin , M. Louzir , T. Lux , K. K. Mahtani , S. Manly , D. A. Martinez Caicedo , N. Mashin , T. Matsubara , C. Mauger , K. S. McFarland , C. McGrew , J. McKean , A. Mefodiev , E. Miller , O. Mineev , A. Minamino , A. L. Moreno , A. Muñoz , T. Nakadaira , K. Nakagiri , T. Nakaya , J. Nanni , L. Nicolas , A. D. Nguyen , D. T. Nguyen , H. Nguyen , V. Nguyen , E. Noah Messomo , T. Nosek , H. M. O'Keeffe , T. Ogawa , W. Okinaga , L. Osu , V. Paolone , G. Pelleriti , L. Pickering , M. A. Ramírez , M. Reh , G. Reina , C. Riccio , S. Roth , A. Rubbia , F. Saadi , K. Sakashita , N. Sallin , S. Samani , F. Sanchez , T. Schefke , C. Schloesser , D. Sgalaberna , A. Shaikovskiy , A. Shvartsman , Y. Shiraishi , N. Shvarev , N. Skrobova , D. Smyczek , M. Smy , A. Speers , D. Svirida , M. Ta , S. Tairafune , M. Tani , H. Tanigawa , A. Teklu , S. Tereshchenko , V. V. Tereshchenko , T. Thaiduc , T. Tsushima , M. Tzanov , Y. Uchida , I. I. Vasilyev , E. Villa , T. Vladisavljevic , D. Wakabayashi , H. Wallace , A. Weber , N. Whitney , C. Wret , Y. Xu , Y. Yang , N. Yershov , A. J. P. Yrey , M. Yokoyama , Y. Yoshimoto , X. Y. Zhao , H. Zheng , H. Zhong , T. Zhu , E. D. Zimmerman , M. Zito

Switching dynamical systems are an expressive model class for the analysis of time-series data. As in many fields within the natural and engineering sciences, the systems under study typically evolve continuously in time, it is natural to…

Machine Learning · Computer Science 2022-05-19 Lukas Köhs , Bastian Alt , Heinz Koeppl

Motivated by robotic surveillance applications, this paper studies the novel problem of maximizing the return time entropy of a Markov chain, subject to a graph topology with travel times and stationary distribution. The return time entropy…

Optimization and Control · Mathematics 2018-05-29 Xiaoming Duan , Mishel George , Francesco Bullo

The effect of perturbations of parameters for uniquely convergent imprecise Markov chains is studied. We provide the maximal distance between the distributions of original and perturbed chain and maximal degree of imprecision, given the…

Probability · Mathematics 2022-09-29 Damjan Škulj

A new approach is developed for evaluating the convergence rate for nonlinear Markov chains (MC) based on the recently developed spectral radius technique of markovian coupling for linear MC and the idea of small nonlinear perturbations of…

Probability · Mathematics 2025-03-27 Alexander Shchegolev , Alexander Veretennikov

We develop exact Markov chain Monte Carlo methods for discretely-sampled, directly and indirectly observed diffusions. The qualification "exact" refers to the fact that the invariant and limiting distribution of the Markov chains is the…

In this paper, an approach to estimating a nonlinear deterministic model is presented. We introduce a stochastic model with extremely small variances so that the deterministic and stochastic models are essentially indistinguishable from…

Methodology · Statistics 2015-11-13 Spyridon J. Hatjispyros , Stephen G. Walker

In this paper we propose augmented interval Markov chains (AIMCs): a generalisation of the familiar interval Markov chains (IMCs) where uncertain transition probabilities are in addition allowed to depend on one another. This new model…

Computational Complexity · Computer Science 2017-01-12 Ventsislav Chonev

Coarse-graining techniques play a central role in reducing the complexity of stochastic models, and are typically characterised by a mapping which projects the full state of the system onto a smaller set of variables which captures the…

Probability · Mathematics 2023-09-28 Bastian Hilder , Upanshu Sharma

Many exact Markov chain Monte Carlo algorithms have been developed for posterior inference in Bayesian nonparametric models which involve infinite-dimensional priors. However, these methods are not generic and special methodology must be…

Computation · Statistics 2014-05-22 Jim E. Griffin

Reversibility is a key property of Markov chains, central to algorithms such as Metropolis-Hastings and other MCMC methods. Yet many applications yield non-reversible chains, motivating the problem of approximating them by reversible ones…

Numerical Analysis · Mathematics 2026-02-27 Stefano Cipolla , Fabio Durastante , Miryam Gnazzo , Beatrice Meini

In this paper we consider the problem of computing the stationary distribution of nearly completely decomposable Markov processes, a well-established area in the classical theory of Markov processes with broad applications in the design,…

Numerical Analysis · Mathematics 2025-06-19 Vasileios Kalantzis , Mark S. Squillante , Chai Wah Wu

We establish quantitative bounds for rates of convergence and asymptotic variances for iterated conditional sequential Monte Carlo (i-cSMC) Markov chains and associated particle Gibbs samplers. Our main findings are that the essential…

Probability · Mathematics 2015-04-15 Christophe Andrieu , Anthony Lee , Matti Vihola

The asymptotic variance is an important criterion to evaluate the performance of Markov chains, especially for the central limit theorems. We give the variational formulas for the asymptotic variance of discrete-time (non-reversible) Markov…

Probability · Mathematics 2020-12-29 Lu-Jing Huang , Yong-Hua Mao

We consider a class of small-sample distribution estimators over noisy channels. Our estimators are designed for repetition channels, and rely on properties of the runs of the observed sequences. These runs are modeled via a special type of…

Information Theory · Computer Science 2012-02-07 Farzad Farnoud , Narayana P. Santhanam , Olgica Milenkovic

Using the renewal approach we prove exponential inequalities for additive functionals and empirical processes of ergodic Markov chains, thus obtaining counterparts of inequalities for sums of independent random variables. The inequalities…

Probability · Mathematics 2013-10-18 Radosław Adamczak , Witold Bednorz
‹ Prev 1 3 4 5 6 7 10 Next ›