• Stars
    star
    1
  • Language
    Python
  • License
    GNU General Publi...
  • Created over 10 years ago
  • Updated almost 7 years ago

Reviews

There are no reviews yet. Be the first to send feedback to the community and the maintainers!

Repository Details

Particle Metropolis-Hastings using gradient and Hessian information

More Repositories

1

pmh-tutorial

Source code and data for the tutorial: "Getting started with particle Metropolis-Hastings for inference in nonlinear models"
R
24
star
2

gpo-smc-abc

Bayesian optimisation for fast approximate inference in state-space models with intractable likelihoods
Python
12
star
3

gpo-ifac2014

Particle filter-based Gaussian process optimisation for parameter inference
MATLAB
10
star
4

phd-thesis

Accelerating Monte Carlo methods for Bayesian inference in dynamical models
Python
10
star
5

barx-sysid2018

Sparse Bayesian ARX models with flexible noise distributions
R
6
star
6

pmh-tutorial-rpkg

R package pmhtutorial available from CRAN.
R
4
star
7

pmmh-correlated2015

Accelerating pseudo-marginal Metropolis-Hastings by correlating auxiliary variables
Python
3
star
8

rjmcmc-sysid2012

Hierarchical Bayesian approaches for robust inference in ARX models
MATLAB
3
star
9

newton-sysid2015

Newton-based maximum likelihood estimation in nonlinear state space models
Python
2
star
10

panel-dpm2016

Approximate Bayesian inference for mixed effects models with heterogeneity
R
2
star
11

qnmh-sysid2018

Constructing Metropolis-Hastings proposals using damped BFGS updates
Python
2
star
12

ml-seminar-20180816

Python
1
star
13

ml-examples

Implementations from a graduate course following "Pattern Recognition and Machine Learning) written by Bishop and published in 2006.
MATLAB
1
star
14

smc-toyexample

Sequential Monte Carlo methods (particle filtering/smoothing) for a toy problem
Mercury
1
star
15

pmmh-qn

Correlated pseudo-marginal Metropolis-Hastings using quasi-Newton proposals
Python
1
star
16

lic-thesis

Source code and data for examples in thesis "Sequential Monte Carlo for inference in nonlinear state space models"
Python
1
star