Bayesian Convolutional Neural Networks

06/15/2018
by   Felix Laumann, et al.
0

We propose a Bayesian convolutional neural network built upon Bayes by Backprop and elaborate how this known method can serve as the fundamental construct of our novel reliable variational inference method for convolutional neural networks. First, we show how Bayes by Backprop can be applied to convolutional layers where weights in filters have probability distributions instead of point-estimates; and second, how our proposed framework leads with various network architectures to performances comparable to convolutional neural networks with point-estimates weights. This work represents the expansion of the group of Bayesian neural networks, which consist now of feedforward, recurrent, and convolutional ones.

READ FULL TEXT

page 1

page 2

page 3

page 4

research
04/11/2023

Neural Network Architectures

These lecture notes provide an overview of Neural Network architectures ...
research
01/08/2019

A Comprehensive guide to Bayesian Convolutional Neural Network with Variational Inference

Artificial Neural Networks are connectionist systems that perform a give...
research
12/17/2014

Flattened Convolutional Neural Networks for Feedforward Acceleration

We present flattened convolutional neural networks that are designed for...
research
02/02/2021

pseudo-Bayesian Neural Networks for detecting Out of Distribution Inputs

Conventional Bayesian Neural Networks (BNNs) are known to be capable of ...
research
02/23/2021

Deep Convolutional Neural Networks with Unitary Weights

While normalizations aim to fix the exploding and vanishing gradient pro...
research
06/22/2020

The GCE in a New Light: Disentangling the γ-ray Sky with Bayesian Graph Convolutional Neural Networks

A fundamental question regarding the Galactic Center Excess (GCE) is whe...
research
11/21/2018

Seeing in the dark with recurrent convolutional neural networks

Classical convolutional neural networks (cCNNs) are very good at categor...

Please sign up or login with your details

Forgot password? Click here to reset