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A Compilation Target for Probabilistic Programming Languages

A Compilation Target for Probabilistic Programming Languages

3 March 2014
Brooks Paige
Frank Wood
ArXivPDFHTML

Papers citing "A Compilation Target for Probabilistic Programming Languages"

6 / 6 papers shown
Title
Neuro-symbolic Neurodegenerative Disease Modeling as Probabilistic
  Programmed Deep Kernels
Neuro-symbolic Neurodegenerative Disease Modeling as Probabilistic Programmed Deep Kernels
Alexander Lavin
BDL
MedIm
24
9
0
16 Sep 2020
Lazy object copy as a platform for population-based probabilistic
  programming
Lazy object copy as a platform for population-based probabilistic programming
Lawrence M. Murray
21
5
0
09 Jan 2020
Probabilistic programming for birth-death models of evolution using an
  alive particle filter with delayed sampling
Probabilistic programming for birth-death models of evolution using an alive particle filter with delayed sampling
J. Kudlicka
Lawrence M. Murray
F. Ronquist
Thomas B. Schon
29
10
0
10 Jul 2019
An Introduction to Probabilistic Programming
An Introduction to Probabilistic Programming
Jan-Willem van de Meent
Brooks Paige
Hongseok Yang
Frank Wood
GP
37
196
0
27 Sep 2018
Semantics for probabilistic programming: higher-order functions,
  continuous distributions, and soft constraints
Semantics for probabilistic programming: higher-order functions, continuous distributions, and soft constraints
S. Staton
Hongseok Yang
C. Heunen
Ohad Kammar
Frank Wood
19
135
0
19 Jan 2016
Getting Started with Particle Metropolis-Hastings for Inference in
  Nonlinear Dynamical Models
Getting Started with Particle Metropolis-Hastings for Inference in Nonlinear Dynamical Models
J. Dahlin
Thomas B. Schon
23
25
0
05 Nov 2015
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