ResearchTrend.AI
  • Papers
  • Communities
  • Events
  • Blog
  • Pricing
Papers
Communities
Social Events
Terms and Conditions
Pricing
Parameter LabParameter LabTwitterGitHubLinkedInBlueskyYoutube

© 2025 ResearchTrend.AI, All rights reserved.

  1. Home
  2. Papers
  3. 1508.00947
  4. Cited By
MCMC-Based Inference in the Era of Big Data: A Fundamental Analysis of
  the Convergence Complexity of High-Dimensional Chains
v1v2 (latest)

MCMC-Based Inference in the Era of Big Data: A Fundamental Analysis of the Convergence Complexity of High-Dimensional Chains

5 August 2015
B. Rajaratnam
Doug Sparks
ArXiv (abs)PDFHTML

Papers citing "MCMC-Based Inference in the Era of Big Data: A Fundamental Analysis of the Convergence Complexity of High-Dimensional Chains"

19 / 19 papers shown
Title
Lower bounds on the rate of convergence for accept-reject-based Markov
  chains in Wasserstein and total variation distances
Lower bounds on the rate of convergence for accept-reject-based Markov chains in Wasserstein and total variation distances
Austin R. Brown
Galin L. Jones
70
3
0
12 Dec 2022
Geometric ergodicity of Gibbs samplers for Bayesian error-in-variable
  regression
Geometric ergodicity of Gibbs samplers for Bayesian error-in-variable regression
Austin R. Brown
45
0
0
17 Sep 2022
Convergence rate bounds for iterative random functions using one-shot
  coupling
Convergence rate bounds for iterative random functions using one-shot coupling
Sabrina Sixta
Jeffrey S. Rosenthal
98
1
0
07 Dec 2021
Exact Convergence Analysis for Metropolis-Hastings Independence Samplers
  in Wasserstein Distances
Exact Convergence Analysis for Metropolis-Hastings Independence Samplers in Wasserstein Distances
Austin R. Brown
Galin L. Jones
53
7
0
19 Nov 2021
Fast Scalable Image Restoration using Total Variation Priors and
  Expectation Propagation
Fast Scalable Image Restoration using Total Variation Priors and Expectation Propagation
D. Yao
S. Mclaughlin
Y. Altmann
35
6
0
04 Oct 2021
Dimension free convergence rates for Gibbs samplers for Bayesian linear
  mixed models
Dimension free convergence rates for Gibbs samplers for Bayesian linear mixed models
Z. Jin
J. Hobert
47
4
0
10 Mar 2021
On the convergence complexity of Gibbs samplers for a family of simple
  Bayesian random effects models
On the convergence complexity of Gibbs samplers for a family of simple Bayesian random effects models
Bryant Davis
J. Hobert
36
3
0
29 Apr 2020
On the limitations of single-step drift and minorization in Markov chain
  convergence analysis
On the limitations of single-step drift and minorization in Markov chain convergence analysis
Qian Qin
J. Hobert
51
32
0
21 Mar 2020
Central limit theorems for Markov chains based on their convergence
  rates in Wasserstein distance
Central limit theorems for Markov chains based on their convergence rates in Wasserstein distance
Rui Jin
Aixin Tan
57
6
0
21 Feb 2020
Bayesian Inference for Large Scale Image Classification
Bayesian Inference for Large Scale Image Classification
Jonathan Heek
Nal Kalchbrenner
UQCVBDL
133
35
0
09 Aug 2019
Transport Monte Carlo: High-Accuracy Posterior Approximation via Random
  Transport
Transport Monte Carlo: High-Accuracy Posterior Approximation via Random Transport
L. Duan
OT
61
11
0
24 Jul 2019
Convergence Analysis of a Collapsed Gibbs Sampler for Bayesian Vector
  Autoregressions
Convergence Analysis of a Collapsed Gibbs Sampler for Bayesian Vector Autoregressions
Karl Oskar Ekvall
Galin L. Jones
48
18
0
06 Jul 2019
Optimal Scaling of Random-Walk Metropolis Algorithms on General Target
  Distributions
Optimal Scaling of Random-Walk Metropolis Algorithms on General Target Distributions
Jun Yang
Gareth O. Roberts
Jeffrey S. Rosenthal
OT
95
29
0
27 Apr 2019
Fast Markov chain Monte Carlo for high dimensional Bayesian regression
  models with shrinkage priors
Fast Markov chain Monte Carlo for high dimensional Bayesian regression models with shrinkage priors
Rui Jin
Aixin Tan
58
8
0
16 Mar 2019
A Bayesian Perspective of Statistical Machine Learning for Big Data
A Bayesian Perspective of Statistical Machine Learning for Big Data
R. Sambasivan
Sourish Das
S. Sahu
BDLGP
60
20
0
09 Nov 2018
Spectral gaps and error estimates for infinite-dimensional
  Metropolis-Hastings with non-Gaussian priors
Spectral gaps and error estimates for infinite-dimensional Metropolis-Hastings with non-Gaussian priors
Bamdad Hosseini
J. Johndrow
63
8
0
30 Sep 2018
Convergence complexity analysis of Albert and Chib's algorithm for
  Bayesian probit regression
Convergence complexity analysis of Albert and Chib's algorithm for Bayesian probit regression
Qian Qin
J. Hobert
53
32
0
24 Dec 2017
Analytic solution and stationary phase approximation for the Bayesian
  lasso and elastic net
Analytic solution and stationary phase approximation for the Bayesian lasso and elastic net
T. Michoel
44
1
0
25 Sep 2017
Complexity Results for MCMC derived from Quantitative Bounds
Complexity Results for MCMC derived from Quantitative Bounds
Jun Yang
Jeffrey S. Rosenthal
84
24
0
02 Aug 2017
1