PYLFIRE : Python implementation of likelihood-free inference by ratio estimation

Show full item record



Permalink

http://hdl.handle.net/10138/326329

Citation

Kokko , J , Remes , U , Thomas , O , Pesonen , H & Corander , J 2019 , ' PYLFIRE : Python implementation of likelihood-free inference by ratio estimation ' , Wellcome open research , vol. 4 , 197 . https://doi.org/10.12688/wellcomeopenres.15583.1

Title: PYLFIRE : Python implementation of likelihood-free inference by ratio estimation
Author: Kokko, J.; Remes, U.; Thomas, Owen; Pesonen, H.; Corander, J.
Contributor organization: Department of Mathematics and Statistics
Jukka Corander / Principal Investigator
Biostatistics Helsinki
Date: 2019-12-10
Language: eng
Number of pages: 13
Belongs to series: Wellcome open research
ISSN: 2398-502X
DOI: https://doi.org/10.12688/wellcomeopenres.15583.1
URI: http://hdl.handle.net/10138/326329
Abstract: Likelihood-free inference for simulator-based models is an emerging methodological branch of statistics which has attracted considerable attention in applications across diverse fields such as population genetics, astronomy and economics. Recently, the power of statistical classifiers has been harnessed in likelihood-free inference to obtain either point estimates or even posterior distributions of model parameters. Here we introduce PYLFIRE, an open-source Python implementation of the inference method LFIRE (likelihood-free inference by ratio estimation) that uses penalised logistic regression. PYLFIRE is made available as part of the general ELFI inference software http://elfi.ai to benefit both the user and developer communities for likelihood-free inference. © 2019 Kokko J et al.
Description: Export Date: 10 February 2021 Correspondence Address: Kokko, J.; Department of Mathematics and Statistics, Finland; email: jan.kokko@helsinki.fi
Subject: 112 Statistics and probability
density-ratio estimation
likelihood-free inference
logistic regression
summary statistics selection
Peer reviewed: Yes
Rights: cc_by
Usage restriction: openAccess
Self-archived version: publishedVersion


Files in this item

Total number of downloads: Loading...

Files Size Format View
68fe8f6e_1aaf_4 ... dda505_15583_jan_kokko.pdf 938.9Kb PDF View/Open

This item appears in the following Collection(s)

Show full item record