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Approximate Bayesian Computational methods

Approximate Bayesian Computational methods

5 January 2011
Jean-Michel Marin
Pierre Pudlo
Christian P. Robert
Robin J. Ryder
ArXivPDFHTML

Papers citing "Approximate Bayesian Computational methods"

50 / 254 papers shown
Title
Simulation-based inference for stochastic nonlinear mixed-effects models with applications in systems biology
Simulation-based inference for stochastic nonlinear mixed-effects models with applications in systems biology
Henrik Häggström
Sebastian Persson
Marija Cvijovic
Umberto Picchini
21
0
0
15 Apr 2025
Misspecification-robust likelihood-free inference in high dimensions
Misspecification-robust likelihood-free inference in high dimensions
Owen Thomas
Raquel Sá-Leao
H. Lencastre
Samuel Kaski
J. Corander
Henri Pesonen
60
9
0
17 Feb 2025
An efficient likelihood-free Bayesian inference method based on sequential neural posterior estimation
An efficient likelihood-free Bayesian inference method based on sequential neural posterior estimation
Yifei Xiong
Xiliang Yang
Sanguo Zhang
Zhijian He
108
2
0
17 Jan 2025
Discovering governing equation in structural dynamics from
  acceleration-only measurements
Discovering governing equation in structural dynamics from acceleration-only measurements
Calvin Alvares
Souvik Chakraborty
17
0
0
18 Jul 2024
Bayesian Structural Model Updating with Multimodal Variational
  Autoencoder
Bayesian Structural Model Updating with Multimodal Variational Autoencoder
Tatsuya Itoi
Kazuho Amishiki
Sangwon Lee
T. Yaoyama
23
6
0
07 Jun 2024
Inference for the stochastic FitzHugh-Nagumo model from real action
  potential data via approximate Bayesian computation
Inference for the stochastic FitzHugh-Nagumo model from real action potential data via approximate Bayesian computation
Adeline Samson
M. Tamborrino
I. Tubikanec
19
2
0
28 May 2024
Sample-efficient neural likelihood-free Bayesian inference of implicit
  HMMs
Sample-efficient neural likelihood-free Bayesian inference of implicit HMMs
Sanmitra Ghosh
Paul J. Birrell
Daniela De Angelis
35
1
0
02 May 2024
Using early rejection Markov chain Monte Carlo and Gaussian processes to
  accelerate ABC methods
Using early rejection Markov chain Monte Carlo and Gaussian processes to accelerate ABC methods
Xuefei Cao
Shijia Wang
Yongdao Zhou
28
3
0
13 Apr 2024
Variational Bayesian Optimal Experimental Design with Normalizing Flows
Variational Bayesian Optimal Experimental Design with Normalizing Flows
Jiayuan Dong
Christian L. Jacobsen
Mehdi Khalloufi
Maryam Akram
Wanjiao Liu
Karthik Duraisamy
Xun Huan
BDL
52
5
0
08 Apr 2024
Copula Approximate Bayesian Computation Using Distribution Random
  Forests
Copula Approximate Bayesian Computation Using Distribution Random Forests
G. Karabatsos
27
1
0
28 Feb 2024
Leveraging Nested MLMC for Sequential Neural Posterior Estimation with
  Intractable Likelihoods
Leveraging Nested MLMC for Sequential Neural Posterior Estimation with Intractable Likelihoods
Xiliang Yang
Yifei Xiong
Zhijian He
16
0
0
30 Jan 2024
A bivariate two-state Markov modulated Poisson process for failure
  modelling
A bivariate two-state Markov modulated Poisson process for failure modelling
Yoel G. Yera
R. Lillo
B. F. Nielsen
Pepa Ramírez-Cobo
Fabrizio Ruggeri
14
9
0
26 Jan 2024
Particle Gibbs for Likelihood-Free Inference of State Space Models with
  Application to Stochastic Volatility
Particle Gibbs for Likelihood-Free Inference of State Space Models with Application to Stochastic Volatility
Zhaoran Hou
Samuel W.K. Wong
11
0
0
20 Dec 2023
Fuse It or Lose It: Deep Fusion for Multimodal Simulation-Based
  Inference
Fuse It or Lose It: Deep Fusion for Multimodal Simulation-Based Inference
Marvin Schmitt
Stefan T. Radev
Paul-Christian Burkner
40
5
0
17 Nov 2023
Fine-Tuning Generative Models as an Inference Method for Robotic Tasks
Fine-Tuning Generative Models as an Inference Method for Robotic Tasks
Orr Krupnik
Elisei Shafer
Tom Jurgenson
Aviv Tamar
27
4
0
19 Oct 2023
Sensitivity-Aware Amortized Bayesian Inference
Sensitivity-Aware Amortized Bayesian Inference
Lasse Elsemüller
Hans Olischläger
Marvin Schmitt
Paul-Christian Burkner
Ullrich Kothe
Stefan T. Radev
13
7
0
17 Oct 2023
An Introduction to the Calibration of Computer Models
An Introduction to the Calibration of Computer Models
Richard D. Wilkinson
Christopher W. Lanyon
11
0
0
13 Oct 2023
An Extendable Python Implementation of Robust Optimisation Monte Carlo
An Extendable Python Implementation of Robust Optimisation Monte Carlo
Vasilis Gkolemis
Michael U. Gutmann
Henri Pesonen
6
1
0
19 Sep 2023
Diffusion Schrödinger Bridges for Bayesian Computation
Diffusion Schrödinger Bridges for Bayesian Computation
J. Heng
Valentin De Bortoli
Arnaud Doucet
DiffM
20
3
0
27 Aug 2023
Bayesian Synthetic Likelihood
Bayesian Synthetic Likelihood
David T. Frazier
Christopher C. Drovandi
David J. Nott
20
216
0
09 May 2023
Reliable Gradient-free and Likelihood-free Prompt Tuning
Reliable Gradient-free and Likelihood-free Prompt Tuning
Maohao Shen
S. Ghosh
P. Sattigeri
Subhro Das
Yuheng Bu
G. Wornell
VLM
44
10
0
30 Apr 2023
Importance is Important: A Guide to Informed Importance Tempering
  Methods
Importance is Important: A Guide to Informed Importance Tempering Methods
Guanxun Li
Aaron Smith
Quan Zhou
13
2
0
13 Apr 2023
Correcting Model Misspecification via Generative Adversarial Networks
Correcting Model Misspecification via Generative Adversarial Networks
Pronoma Banerjee
Manasi V Gude
Rajvi J Sampat
Sharvari M Hedaoo
S. Dhavala
Snehanshu Saha
11
0
0
07 Apr 2023
Graph-informed simulation-based inference for models of active matter
Graph-informed simulation-based inference for models of active matter
Namid R Stillman
S. Henkes
R. Mayor
Gilles Louppe
11
1
0
05 Apr 2023
Simulation-based Bayesian inference for robotic grasping
Simulation-based Bayesian inference for robotic grasping
Norman Marlier
O. Bruls
Gilles Louppe
11
4
0
10 Mar 2023
Online simulator-based experimental design for cognitive model selection
Online simulator-based experimental design for cognitive model selection
Alexander Aushev
Aini Putkonen
Grégoire Clarté
Suyog H. Chandramouli
Luigi Acerbi
Samuel Kaski
Andrew Howes
17
2
0
03 Mar 2023
JANA: Jointly Amortized Neural Approximation of Complex Bayesian Models
JANA: Jointly Amortized Neural Approximation of Complex Bayesian Models
Stefan T. Radev
Marvin Schmitt
Valentin Pratz
Umberto Picchini
Ullrich Kothe
Paul-Christian Burkner
BDL
14
26
0
17 Feb 2023
Optimally-Weighted Estimators of the Maximum Mean Discrepancy for
  Likelihood-Free Inference
Optimally-Weighted Estimators of the Maximum Mean Discrepancy for Likelihood-Free Inference
Ayush Bharti
Masha Naslidnyk
Oscar Key
Samuel Kaski
F. Briol
31
12
0
27 Jan 2023
Better Together: pooling information in likelihood-free inference
Better Together: pooling information in likelihood-free inference
David T. Frazier
Christopher C. Drovandi
David J. Nott
14
1
0
05 Dec 2022
Maximum Likelihood Learning of Unnormalized Models for Simulation-Based
  Inference
Maximum Likelihood Learning of Unnormalized Models for Simulation-Based Inference
Pierre Glaser
Michael Arbel
Samo Hromadka
Arnaud Doucet
A. Gretton
14
2
0
26 Oct 2022
A Geometric Perspective on Bayesian and Generalized Fiducial Inference
A Geometric Perspective on Bayesian and Generalized Fiducial Inference
Yang Liu
Jan Hannig
Alexander C. Murph
29
0
0
11 Oct 2022
Computing Bayes: From Then 'Til Now'
Computing Bayes: From Then 'Til Now'
G. Martin
David T. Frazier
Christian P. Robert
20
15
0
01 Aug 2022
Bayesian model calibration for block copolymer self-assembly:
  Likelihood-free inference and expected information gain computation via
  measure transport
Bayesian model calibration for block copolymer self-assembly: Likelihood-free inference and expected information gain computation via measure transport
Ricardo Baptista
Lianghao Cao
Joshua Chen
Omar Ghattas
Fengyi Li
Youssef M. Marzouk
J. Oden
11
11
0
22 Jun 2022
Generalised Bayesian Inference for Discrete Intractable Likelihood
Generalised Bayesian Inference for Discrete Intractable Likelihood
Takuo Matsubara
Jeremias Knoblauch
F. Briol
Chris J. Oates
15
14
0
16 Jun 2022
Concentration of discrepancy-based approximate Bayesian computation via
  Rademacher complexity
Concentration of discrepancy-based approximate Bayesian computation via Rademacher complexity
Sirio Legramanti
Daniele Durante
Pierre Alquier
31
6
0
14 Jun 2022
Approximate confidence distribution computing
Approximate confidence distribution computing
S. Thornton
Wentao Li
Min‐ge Xie
17
4
0
03 Jun 2022
Probabilistic learning constrained by realizations using a weak
  formulation of Fourier transform of probability measures
Probabilistic learning constrained by realizations using a weak formulation of Fourier transform of probability measures
Christian Soize
6
5
0
06 May 2022
On predictive inference for intractable models via approximate Bayesian
  computation
On predictive inference for intractable models via approximate Bayesian computation
Marko Jarvenpaa
J. Corander
TPM
12
2
0
23 Mar 2022
Bayesian inference in Epidemics: linear noise analysis
Bayesian inference in Epidemics: linear noise analysis
S. Bronstein
Stefan Engblom
R. Marin
9
0
0
21 Mar 2022
Amortised Likelihood-free Inference for Expensive Time-series Simulators
  with Signatured Ratio Estimation
Amortised Likelihood-free Inference for Expensive Time-series Simulators with Signatured Ratio Estimation
Joel Dyer
Patrick W Cannon
Sebastian M. Schmon
8
9
0
23 Feb 2022
Mixed Effects Neural ODE: A Variational Approximation for Analyzing the
  Dynamics of Panel Data
Mixed Effects Neural ODE: A Variational Approximation for Analyzing the Dynamics of Panel Data
Jurijs Nazarovs
Rudrasis Chakraborty
Songwong Tasneeyapant
Sathya Ravi
Vikas Singh
7
4
0
18 Feb 2022
Probabilistic learning inference of boundary value problem with
  uncertainties based on Kullback-Leibler divergence under implicit constraints
Probabilistic learning inference of boundary value problem with uncertainties based on Kullback-Leibler divergence under implicit constraints
Christian Soize
9
5
0
10 Feb 2022
Approximate Bayesian Computation with Domain Expert in the Loop
Approximate Bayesian Computation with Domain Expert in the Loop
Ayush Bharti
Louis Filstroff
Samuel Kaski
TPM
22
7
0
28 Jan 2022
Learning Summary Statistics for Bayesian Inference with Autoencoders
Learning Summary Statistics for Bayesian Inference with Autoencoders
Carlo Albert
S. Ulzega
Firat Ozdemir
F. Pérez-Cruz
Antonietta Mira
BDL
25
10
0
28 Jan 2022
Approximating Bayes in the 21st Century
Approximating Bayes in the 21st Century
G. Martin
David T. Frazier
Christian P. Robert
22
25
0
20 Dec 2021
Unifying Likelihood-free Inference with Black-box Optimization and
  Beyond
Unifying Likelihood-free Inference with Black-box Optimization and Beyond
Dinghuai Zhang
Jie Fu
Yoshua Bengio
Aaron Courville
24
13
0
06 Oct 2021
Simulation-based Bayesian inference for multi-fingered robotic grasping
Simulation-based Bayesian inference for multi-fingered robotic grasping
Norman Marlier
O. Bruls
Gilles Louppe
24
6
0
29 Sep 2021
A Survey of Monte Carlo Methods for Parameter Estimation
A Survey of Monte Carlo Methods for Parameter Estimation
D. Luengo
Luca Martino
M. Bugallo
Victor Elvira
S. Särkkä
6
153
0
25 Jul 2021
Likelihood-Free Frequentist Inference: Bridging Classical Statistics and
  Machine Learning for Reliable Simulator-Based Inference
Likelihood-Free Frequentist Inference: Bridging Classical Statistics and Machine Learning for Reliable Simulator-Based Inference
Niccolò Dalmasso
Luca Masserano
David Y. Zhao
Rafael Izbicki
Ann B. Lee
16
5
0
08 Jul 2021
Approximate Bayesian Computation with Path Signatures
Approximate Bayesian Computation with Path Signatures
Joel Dyer
Patrick W Cannon
Sebastian M. Schmon
11
15
0
23 Jun 2021
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