Variational EP with Probabilistic Backpropagation for Bayesian Neural Networks

03/02/2023
by   Kehinde Olobatuyi, et al.
0

I propose a novel approach for nonlinear Logistic regression using a two-layer neural network (NN) model structure with hierarchical priors on the network weights. I present a hybrid of expectation propagation called Variational Expectation Propagation approach (VEP) for approximate integration over the posterior distribution of the weights, the hierarchical scale parameters of the priors and zeta. Using a factorized posterior approximation I derive a computationally efficient algorithm, whose complexity scales similarly to an ensemble of independent sparse logistic models. The approach can be extended beyond standard activation functions and NN model structures to form flexible nonlinear binary predictors from multiple sparse linear models. I consider a hierarchical Bayesian model with logistic regression likelihood and a Gaussian prior distribution over the parameters called weights and hyperparameters. I work in the perspective of E step and M step for computing the approximating posterior and updating the parameters using the computed posterior respectively.

READ FULL TEXT

page 1

page 2

page 3

page 4

research
03/27/2013

Expectation Propagation for Neural Networks with Sparsity-promoting Priors

We propose a novel approach for nonlinear regression using a two-layer n...
research
05/05/2023

Sparsifying Bayesian neural networks with latent binary variables and normalizing flows

Artificial neural networks (ANNs) are powerful machine learning methods ...
research
03/24/2023

The limited-memory recursive variational Gaussian approximation (L-RVGA)

We consider the problem of computing a Gaussian approximation to the pos...
research
09/04/2023

Efficient expectation propagation for posterior approximation in high-dimensional probit models

Bayesian binary regression is a prosperous area of research due to the c...
research
05/15/2018

The Hierarchical Adaptive Forgetting Variational Filter

A common problem in Machine Learning and statistics consists in detectin...
research
07/22/2011

Efficient variational inference in large-scale Bayesian compressed sensing

We study linear models under heavy-tailed priors from a probabilistic vi...
research
11/02/2022

Variational Hierarchical Mixtures for Learning Probabilistic Inverse Dynamics

Well-calibrated probabilistic regression models are a crucial learning c...

Please sign up or login with your details

Forgot password? Click here to reset