In this paper, we employ variational arguments to establish a connection between ensemble methods for Neural Networks and Bayesian inference. We consider an ensemble-based scheme where each model/particle corresponds to a perturbation of the data by means of parametric bootstrap and a perturbation of the prior. We derive conditions under which any optimization steps of the particles makes the associated distribution reduce its divergence to the posterior over model parameters. Such conditions do not require any particular form for the approximation and they are purely geometrical, giving insights on the behavior of the ensemble on a number of interesting models such as Neural Networks with ReLU activations. Experiments confirm that ensemble...
The results in this thesis are based on applications of the expectation propagation algorithm to app...
This tutorial describes the mean-field variational Bayesian approximation to inference in graphical ...
We present Sequential Neural Variational Inference (SNVI), an approach to perform Bayesian inference...
Bayesian treatments of learning in neural networks are typically based either on a local Gaussian ap...
Ensemble learning by variational free energy minimization is a tool introduced to neural networks by...
Bayesian treatments of learning in neural networks are typically based either on local Gaussian appr...
Bayesian statistics is a powerful framework for modeling the world and reasoning over uncertainty. I...
© 7th International Conference on Learning Representations, ICLR 2019. All Rights Reserved. Bayesian...
Dropout, a stochastic regularisation technique for training of neural networks, has recently been re...
AbstractWe describe two specific examples of neural-Bayesian approaches for complex modeling tasks: ...
Dropout, a stochastic regularisation technique for training of neural networks, has recently been re...
We show how to use a variational approximation to the logistic function to perform approximate infer...
The Bayesian framework for machine learning allows for the incorporation of prior knowledge in a coh...
For a Bayesian, the task to define the likelihood can be as perplexing as the task to define the pri...
This work presents a decentralized, approx-imate method for performing variational in-ference on a n...
The results in this thesis are based on applications of the expectation propagation algorithm to app...
This tutorial describes the mean-field variational Bayesian approximation to inference in graphical ...
We present Sequential Neural Variational Inference (SNVI), an approach to perform Bayesian inference...
Bayesian treatments of learning in neural networks are typically based either on a local Gaussian ap...
Ensemble learning by variational free energy minimization is a tool introduced to neural networks by...
Bayesian treatments of learning in neural networks are typically based either on local Gaussian appr...
Bayesian statistics is a powerful framework for modeling the world and reasoning over uncertainty. I...
© 7th International Conference on Learning Representations, ICLR 2019. All Rights Reserved. Bayesian...
Dropout, a stochastic regularisation technique for training of neural networks, has recently been re...
AbstractWe describe two specific examples of neural-Bayesian approaches for complex modeling tasks: ...
Dropout, a stochastic regularisation technique for training of neural networks, has recently been re...
We show how to use a variational approximation to the logistic function to perform approximate infer...
The Bayesian framework for machine learning allows for the incorporation of prior knowledge in a coh...
For a Bayesian, the task to define the likelihood can be as perplexing as the task to define the pri...
This work presents a decentralized, approx-imate method for performing variational in-ference on a n...
The results in this thesis are based on applications of the expectation propagation algorithm to app...
This tutorial describes the mean-field variational Bayesian approximation to inference in graphical ...
We present Sequential Neural Variational Inference (SNVI), an approach to perform Bayesian inference...