The aim of Probabilistic Programming (PP) is to automate inference in probabilistic models. One efficient realization of PP-based inference concerns variational message passing-based (VMP) inference in a factor graph. VMP is efficient but in principle only leads to closed-form update rules in case the model consists of conjugate and/or conditionally conjugate factor pairs. Recently, Extended Variational Message Passing (EVMP) has been proposed to broaden the applicability of VMP by importance sampling-based particle methods for non-linear and non-conjugate factor pairs. EVMP automates the importance sampling procedure by employing forward messages as proposal distributions, which unfortunately may lead to inaccurate estimation results and n...
Variational message passing is an efficient Bayesian inference method in factorized probabilistic mo...
Variational message passing is an efficient Bayesian inference method in factorized probabilistic mo...
Variational message passing is an efficient Bayesian inference method in factorized probabilistic mo...
The aim of Probabilistic Programming (PP) is to automate inference in probabilistic models. One effi...
The aim of Probabilistic Programming (PP) is to automate inference in probabilistic models. One effi...
The aim of Probabilistic Programming (PP) is to automate inference in probabilistic models. One effi...
The aim of Probabilistic Programming (PP) is to automate inference in probabilistic models. One effi...
The aim of Probabilistic Programming (PP) is to automate inference in probabilistic models. One effi...
Variational Message Passing (VMP) provides an automatable and efficient algorithmic framework for ap...
Variational Message Passing (VMP) provides an automatable and efficient algorithmic framework for ap...
Variational Message Passing (VMP) provides an automatable and efficient algorithmic framework for ap...
Variational Message Passing (VMP) provides an automatable and efficient algorithmic framework for ap...
Variational Message Passing (VMP) provides an automatable and efficient algorithmic framework for ap...
Stochastic approximation methods for variational inference have recently gained popularity in the pr...
Stochastic approximation methods for variational inference have recently gained popularity in the pr...
Variational message passing is an efficient Bayesian inference method in factorized probabilistic mo...
Variational message passing is an efficient Bayesian inference method in factorized probabilistic mo...
Variational message passing is an efficient Bayesian inference method in factorized probabilistic mo...
The aim of Probabilistic Programming (PP) is to automate inference in probabilistic models. One effi...
The aim of Probabilistic Programming (PP) is to automate inference in probabilistic models. One effi...
The aim of Probabilistic Programming (PP) is to automate inference in probabilistic models. One effi...
The aim of Probabilistic Programming (PP) is to automate inference in probabilistic models. One effi...
The aim of Probabilistic Programming (PP) is to automate inference in probabilistic models. One effi...
Variational Message Passing (VMP) provides an automatable and efficient algorithmic framework for ap...
Variational Message Passing (VMP) provides an automatable and efficient algorithmic framework for ap...
Variational Message Passing (VMP) provides an automatable and efficient algorithmic framework for ap...
Variational Message Passing (VMP) provides an automatable and efficient algorithmic framework for ap...
Variational Message Passing (VMP) provides an automatable and efficient algorithmic framework for ap...
Stochastic approximation methods for variational inference have recently gained popularity in the pr...
Stochastic approximation methods for variational inference have recently gained popularity in the pr...
Variational message passing is an efficient Bayesian inference method in factorized probabilistic mo...
Variational message passing is an efficient Bayesian inference method in factorized probabilistic mo...
Variational message passing is an efficient Bayesian inference method in factorized probabilistic mo...