bssm: Bayesian Inference of Non-linear and Non-Gaussian State Space Models in R
Helske, J., & Vihola, M. (2021). bssm: Bayesian Inference of Non-linear and Non-Gaussian State Space Models in R. The R Journal, 13(2), 578-589. https://doi.org/10.32614/RJ-2021-103
Julkaistu sarjassa
The R JournalPäivämäärä
2021Tekijänoikeudet
© Authors, 2021
We present an R package bssm for Bayesian non-linear/non-Gaussian state space modelling. Unlike the existing packages, bssm allows for easy-to-use approximate inference based on Gaussian approximations such as the Laplace approximation and the extended Kalman filter. The package accommodates also discretely observed latent diffusion processes. The inference is based on fully automatic, adaptive Markov chain Monte Carlo (MCMC) on the hyperparameters, with optional importance sampling post-correction to eliminate any approximation bias. The package implements also a direct pseudo-marginal MCMC and a delayed acceptance pseudo-marginal MCMC using intermediate approximations. The package offers an easy-to-use interface to define models with linear-Gaussian state dynamics with non-Gaussian observation models, and has an Rcpp interface for specifying custom non-linear and diffusion models.
Julkaisija
R Foundation for Statistical ComputingISSN Hae Julkaisufoorumista
2073-4859Asiasanat
Alkuperäislähde
https://journal.r-project.org/archive/2021/RJ-2021-103/index.htmlJulkaisu tutkimustietojärjestelmässä
https://converis.jyu.fi/converis/portal/detail/Publication/103546623
Metadata
Näytä kaikki kuvailutiedotKokoelmat
Rahoittaja(t)
Suomen AkatemiaRahoitusohjelmat(t)
Akatemiatutkijan tutkimuskulut, SA; Profilointi, SA; Akatemiahanke, SALisätietoja rahoituksesta
This work has been supported by the Academy of Finland research grants 284513, 312605, 315619, 311877, and 331817.Lisenssi
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