Simulation-based inference.
Project description
sbi: simulation-based inference
Getting Started | Documentation
sbi
is a PyTorch package for simulation-based inference. Simulation-based inference is
the process of finding parameters of a simulator from observations.
sbi
takes a Bayesian approach and returns a full posterior distribution
over the parameters, conditional on the observations. This posterior can be amortized (i.e.
useful for any observation) or focused (i.e. tailored to a particular observation), with different
computational trade-offs.
sbi
offers a simple interface for one-line posterior inference.
from sbi.inference import infer
# import your simulator, define your prior over the parameters
parameter_posterior = infer(simulator, prior, method='SNPE', num_simulations=100)
See below for the available methods of inference, SNPE
, SNRE
and SNLE
.
Installation
sbi
requires Python 3.6 or higher. We recommend to use a conda
virtual
environment (Miniconda installation instructions). If conda
is installed on the system, an environment for
installing sbi
can be created as follows:
# Create an environment for sbi (indicate Python 3.6 or higher); activate it
$ conda create -n sbi_env python=3.7 && conda activate sbi_env
Independent of whether you are using conda
or not, sbi
can be installed using pip
:
$ pip install sbi
To test the installation, drop into a python prompt and run
from sbi.examples.minimal import simple
posterior = simple()
print(posterior)
Inference Algorithms
The following algorithms are currently available:
Sequential Neural Posterior Estimation (SNPE)
SNPE_C
orAPT
from Greenberg D, Nonnenmacher M, and Macke J Automatic Posterior Transformation for likelihood-free inference (ICML 2019).
Sequential Neural Likelihood Estimation (SNLE)
SNLE_A
or justSNL
from Papamakarios G, Sterrat DC and Murray I Sequential Neural Likelihood (AISTATS 2019).
Sequential Neural Ratio Estimation (SNRE)
-
SNRE_A
orAALR
from Hermans J, Begy V, and Louppe G. Likelihood-free Inference with Amortized Approximate Likelihood Ratios (ICML 2020). -
SNRE_B
orSRE
from Durkan C, Murray I, and Papamakarios G. On Contrastive Learning for Likelihood-free Inference (ICML 2020).
Feedback and Contributions
We would like to hear how sbi
is working for your inference problems as well as receive bug reports, pull requests and other feedback (see
contribute).
Acknowledgements
sbi
is the successor (using PyTorch) of the
delfi
package. It was started as a fork of Conor
M. Durkan's lfi
. sbi
runs as a community project; development is coordinated at the
mackelab. See also credits.
Support
sbi
has been developed in the context of the ADIMEM
grant, project A. ADIMEM is a
BMBF grant awarded to groups at the Technical University of Munich, University of
Tübingen and Research Center caesar of the Max Planck Gesellschaft.
License
Affero General Public License v3 (AGPLv3)
Citation
If you use sbi
consider citing the corresponding paper:
@article{tejero-cantero2020sbi,
doi = {10.21105/joss.02505},
url = {https://doi.org/10.21105/joss.02505},
year = {2020},
publisher = {The Open Journal},
volume = {5},
number = {52},
pages = {2505},
author = {Alvaro Tejero-Cantero and Jan Boelts and Michael Deistler and Jan-Matthis Lueckmann and Conor Durkan and Pedro J. Gonçalves and David S. Greenberg and Jakob H. Macke},
title = {sbi: A toolkit for simulation-based inference},
journal = {Journal of Open Source Software}
}
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