We introduce the sequential neural posterior and likelihood approximation (SNPLA) algorithm. SNPLA is a normalizing flows-based algorithm for inference in implicit models, and therefore is a simulation-based inference method that only requires simulations from a generative model. SNPLA avoids Markov chain Monte Carlo sampling and correction-steps of the parameter proposal function that are introduced in similar methods, but that can be numerically unstable or restrictive. By utilizing the reverse KL divergence, SNPLA manages to learn both the likelihood and the posterior in a sequential manner. Over four experiments, we show that SNPLA performs competitively when utilizing the same number of model simulations as used in other methods, even ...
Copyright © 2014 by Emerald Group Publishing Limited. Massively parallel desktop computing capabilit...
We discuss a novel strategy for training neural networks using sequential Monte Carlo algorithms and...
A core problem in statistics and probabilistic machine learning is to compute probability distributi...
We introduce the sequential neural posterior and likelihood approximation (SNPLA) algorithm. SNPLA i...
We present Sequential Neural Variational Inference (SNVI), an approach to perform Bayesian inference...
This doctoral thesis in computational statistics utilizes both Monte Carlo methods(approximate Bayes...
We present Surjective Sequential Neural Likelihood (SSNL) estimation, a novel method for simulation-...
Bayesian inference without the likelihood evaluation, or likelihood-free inference, has been a key r...
Science makes extensive use of simulations to model the world. Statistical inference identifies whic...
This is the final version of the article. It first appeared from Curran Associates via http://papers...
Automatic decision making and pattern recognition under uncertainty are difficult tasks that are ubi...
This work proposes “jointly amortized neural approximation” (JANA) of intractable likelihood functio...
Posterior inference with an intractable likelihood is becoming an increasingly common task in scient...
AbstractWe describe two specific examples of neural-Bayesian approaches for complex modeling tasks: ...
Simulation models of complex dynamics in the natural and social sciences commonly lack a tractable...
Copyright © 2014 by Emerald Group Publishing Limited. Massively parallel desktop computing capabilit...
We discuss a novel strategy for training neural networks using sequential Monte Carlo algorithms and...
A core problem in statistics and probabilistic machine learning is to compute probability distributi...
We introduce the sequential neural posterior and likelihood approximation (SNPLA) algorithm. SNPLA i...
We present Sequential Neural Variational Inference (SNVI), an approach to perform Bayesian inference...
This doctoral thesis in computational statistics utilizes both Monte Carlo methods(approximate Bayes...
We present Surjective Sequential Neural Likelihood (SSNL) estimation, a novel method for simulation-...
Bayesian inference without the likelihood evaluation, or likelihood-free inference, has been a key r...
Science makes extensive use of simulations to model the world. Statistical inference identifies whic...
This is the final version of the article. It first appeared from Curran Associates via http://papers...
Automatic decision making and pattern recognition under uncertainty are difficult tasks that are ubi...
This work proposes “jointly amortized neural approximation” (JANA) of intractable likelihood functio...
Posterior inference with an intractable likelihood is becoming an increasingly common task in scient...
AbstractWe describe two specific examples of neural-Bayesian approaches for complex modeling tasks: ...
Simulation models of complex dynamics in the natural and social sciences commonly lack a tractable...
Copyright © 2014 by Emerald Group Publishing Limited. Massively parallel desktop computing capabilit...
We discuss a novel strategy for training neural networks using sequential Monte Carlo algorithms and...
A core problem in statistics and probabilistic machine learning is to compute probability distributi...