Stan is a probabilistic programming language for specifying statistical models. A Stan program imperatively defines a log probability function over parameters conditioned on specified data and constants. As of version 2.2.0, Stan provides full Bayesian inference for continuous-variable models through Markov chain Monte Carlo methods such as the No-U-Turn sampler, an adaptive form of Hamiltonian Monte Carlo sampling. Penalized maximum likelihood estimates are calculated using optimization methods such as the Broyden-Fletcher-Goldfarb-Shanno algorithm. Stan is also a platform for computing log densities and their gradients and Hessians, which can be used in alternative algorithms such as variational Bayes, expectation propa-gation, and margin...
We implement a standard Hidden Markov Model (HMM) and the Input-Output Hidden Markov Model for unsup...
The potential outcomes framework often uses one or more parametric outcome models to learn about und...
This tutorial provides the reader with a basic tutorial on how to perform a Bayesian regression in B...
Stan is a probabilistic programming language that is popular in the statistics community, with a hig...
We present SlicStan — a probabilistic programming language that compiles to Stan and uses static ana...
International audienceStan is a probabilistic programming language that is popular in the statistics...
The brms package implements Bayesian multilevel models in R using the probabilistic programming lang...
With the arrival of the R packages \fontencoding {T1}\texttt {nlme} and \fontencoding {T1}\texttt {l...
An attempt is made to fit three distributions, the Lomax, exponential Lomax, and Weibull Lomax to im...
v2.15.0 (14 April 2017) New Team Members Sean Talts (Columbia University) -- Stan and Math librarie...
International audienceStan is a very popular probabilistic language with a state-of-the-art HMC samp...
This tutorial shows how to build, fit, and criticize disease transmission models in Stan, and should...
Probabilistic programming is an emerging subfield of AI that extends traditional programming languag...
Probabilistic programming is an emerging subfield of AI that extends traditional programming languag...
The field of Bayesian statistics has experienced a major boom in recent years with tools based on Ha...
We implement a standard Hidden Markov Model (HMM) and the Input-Output Hidden Markov Model for unsup...
The potential outcomes framework often uses one or more parametric outcome models to learn about und...
This tutorial provides the reader with a basic tutorial on how to perform a Bayesian regression in B...
Stan is a probabilistic programming language that is popular in the statistics community, with a hig...
We present SlicStan — a probabilistic programming language that compiles to Stan and uses static ana...
International audienceStan is a probabilistic programming language that is popular in the statistics...
The brms package implements Bayesian multilevel models in R using the probabilistic programming lang...
With the arrival of the R packages \fontencoding {T1}\texttt {nlme} and \fontencoding {T1}\texttt {l...
An attempt is made to fit three distributions, the Lomax, exponential Lomax, and Weibull Lomax to im...
v2.15.0 (14 April 2017) New Team Members Sean Talts (Columbia University) -- Stan and Math librarie...
International audienceStan is a very popular probabilistic language with a state-of-the-art HMC samp...
This tutorial shows how to build, fit, and criticize disease transmission models in Stan, and should...
Probabilistic programming is an emerging subfield of AI that extends traditional programming languag...
Probabilistic programming is an emerging subfield of AI that extends traditional programming languag...
The field of Bayesian statistics has experienced a major boom in recent years with tools based on Ha...
We implement a standard Hidden Markov Model (HMM) and the Input-Output Hidden Markov Model for unsup...
The potential outcomes framework often uses one or more parametric outcome models to learn about und...
This tutorial provides the reader with a basic tutorial on how to perform a Bayesian regression in B...