We present Sequential Neural Variational Inference (SNVI), an approach to perform Bayesian inference in models with intractable likelihoods. SNVI combines likelihood-estimation (or likelihood-ratio-estimation) with variational inference to achieve a scalable simulation-based inference approach. SNVI maintains the flexibility of likelihood(-ratio) estimation to allow arbitrary proposals for simulations, while simultaneously providing a functional estimate of the posterior distribution without requiring MCMC sampling. We present several variants of SNVI and demonstrate that they are substantially more computationally efficient than previous algorithms, without loss of accuracy on benchmark tasks. We apply SNVI to a neuroscience model of the p...
Variational inference (VI) or Variational Bayes (VB) is a popular alternative to MCMC, which doesn\u...
International audienceUnderstanding the bio-physical mechanisms underlying complex neuronal phenomen...
An increasing number of experimental studies indicate that perception encodes a posterior probabilit...
Science makes extensive use of simulations to model the world. Statistical inference identifies whic...
We introduce the sequential neural posterior and likelihood approximation (SNPLA) algorithm. SNPLA i...
Bayesian statistics is a powerful framework for modeling the world and reasoning over uncertainty. I...
One of the central goals of computational neuroscience is to understand the dynamics of single neuro...
Many recent advances in large scale probabilistic inference rely on variational methods. The success...
Many models in neuroscience, such as networks of spiking neurons or complex biophysical models, are ...
AbstractWe describe two specific examples of neural-Bayesian approaches for complex modeling tasks: ...
We present Surjective Sequential Neural Likelihood (SSNL) estimation, a novel method for simulation-...
Accepted at the ICML 2022 Workshop on Machine Learning for AstrophysicsICML 2022 Workshop on Machine...
Bayesian inference has emerged as a general framework that captures how organisms make decisions und...
Bayesian neural networks (BNNs) hold great promise as a flexible and principled solution to deal wit...
Bayesian statistical inference provides a principled framework for linking mechanistic models of neu...
Variational inference (VI) or Variational Bayes (VB) is a popular alternative to MCMC, which doesn\u...
International audienceUnderstanding the bio-physical mechanisms underlying complex neuronal phenomen...
An increasing number of experimental studies indicate that perception encodes a posterior probabilit...
Science makes extensive use of simulations to model the world. Statistical inference identifies whic...
We introduce the sequential neural posterior and likelihood approximation (SNPLA) algorithm. SNPLA i...
Bayesian statistics is a powerful framework for modeling the world and reasoning over uncertainty. I...
One of the central goals of computational neuroscience is to understand the dynamics of single neuro...
Many recent advances in large scale probabilistic inference rely on variational methods. The success...
Many models in neuroscience, such as networks of spiking neurons or complex biophysical models, are ...
AbstractWe describe two specific examples of neural-Bayesian approaches for complex modeling tasks: ...
We present Surjective Sequential Neural Likelihood (SSNL) estimation, a novel method for simulation-...
Accepted at the ICML 2022 Workshop on Machine Learning for AstrophysicsICML 2022 Workshop on Machine...
Bayesian inference has emerged as a general framework that captures how organisms make decisions und...
Bayesian neural networks (BNNs) hold great promise as a flexible and principled solution to deal wit...
Bayesian statistical inference provides a principled framework for linking mechanistic models of neu...
Variational inference (VI) or Variational Bayes (VB) is a popular alternative to MCMC, which doesn\u...
International audienceUnderstanding the bio-physical mechanisms underlying complex neuronal phenomen...
An increasing number of experimental studies indicate that perception encodes a posterior probabilit...