Buoyed by the success of deep multilayer neural networks, there is renewed interest in scalable learning of Bayesian neural networks. Here, we study algorithms that utilize recent advances in Bayesian inference to efficiently learn distributions over network weights. In particular, we focus on recently proposed assumed density filtering based methods for learning Bayesian neural networks -- Expectation and Probabilistic backpropagation. Apart from scaling to large datasets, these techniques seamlessly deal with non-differentiable activation functions and provide parameter (learning rate, momentum) free learning. In this paper, we first rigorously compare the two algorithms and in the process develop several extensions, including a version o...
Bayesian treatments of learning in neural networks are typically based either on a local Gaussian ap...
This paper introduces exact learning of Bayesian networks in estimation of distribution algorithms. ...
Deep Learning-based models are becoming more and more relevant for an increasing number of applicati...
This paper reviews the Bayesian approach to learning in neural networks, then introduces a new adapt...
Large multilayer neural networks trained with backpropagation have recently achieved state-of-the-ar...
Significant success has been reported recently ucsing deep neural networks for classification. Such ...
Learning Bayesian networks is a central problem for pattern recognition, density estimation and clas...
Summary The application of the Bayesian learning paradigm to neural networks results in a flexi-ble ...
Multilayer Neural Networks (MNNs) are commonly trained using gradient descent-based methods, such as...
Bayesian techniques have been developed over many years in a range of different fields, but have onl...
We introduce a new, efficient, principled and backpropagation-compatible algorithm for learn-ing a p...
Bayesian techniques have been developed over many years in a range of dierent elds, but have only re...
Deep Gaussian processes (DGPs) are multi-layer hierarchical generalisations of Gaussian processes (G...
When learning Bayesian network based classifiers continuous variables are usually handled by discret...
Compared to point estimates calculated by standard neural networks, Bayesian neural networks (BNN) p...
Bayesian treatments of learning in neural networks are typically based either on a local Gaussian ap...
This paper introduces exact learning of Bayesian networks in estimation of distribution algorithms. ...
Deep Learning-based models are becoming more and more relevant for an increasing number of applicati...
This paper reviews the Bayesian approach to learning in neural networks, then introduces a new adapt...
Large multilayer neural networks trained with backpropagation have recently achieved state-of-the-ar...
Significant success has been reported recently ucsing deep neural networks for classification. Such ...
Learning Bayesian networks is a central problem for pattern recognition, density estimation and clas...
Summary The application of the Bayesian learning paradigm to neural networks results in a flexi-ble ...
Multilayer Neural Networks (MNNs) are commonly trained using gradient descent-based methods, such as...
Bayesian techniques have been developed over many years in a range of different fields, but have onl...
We introduce a new, efficient, principled and backpropagation-compatible algorithm for learn-ing a p...
Bayesian techniques have been developed over many years in a range of dierent elds, but have only re...
Deep Gaussian processes (DGPs) are multi-layer hierarchical generalisations of Gaussian processes (G...
When learning Bayesian network based classifiers continuous variables are usually handled by discret...
Compared to point estimates calculated by standard neural networks, Bayesian neural networks (BNN) p...
Bayesian treatments of learning in neural networks are typically based either on a local Gaussian ap...
This paper introduces exact learning of Bayesian networks in estimation of distribution algorithms. ...
Deep Learning-based models are becoming more and more relevant for an increasing number of applicati...