AbstractWe describe two specific examples of neural-Bayesian approaches for complex modeling tasks: survival analysis and multitask learning. In both cases, we can come up with reasonable priors on the parameters of the neural network. As a result, the Bayesian approaches improve their (maximum likelihood) frequentist counterparts dramatically. By illustrating their application on the models under study, we review and compare algorithms that can be used for Bayesian inference: Laplace approximation, variational algorithms, Monte Carlo sampling, and empirical Bayes
The solution to many science and engineering problems includes identifying the minimum or maximum of...
The Bayesian framework for machine learning allows for the incorporation of prior knowledge in a coh...
This paper introduces a new neural network based prior for real valued functions on $\mathbb R^d$ wh...
AbstractWe describe two specific examples of neural-Bayesian approaches for complex modeling tasks: ...
The last decade witnessed a growing interest in Bayesian learning. Yet, the technicality of the topi...
Summary The application of the Bayesian learning paradigm to neural networks results in a flexi-ble ...
We give a short review on Bayesian techniques for neural networks and demonstrate the advantages of ...
Conventional training methods for neural networks involve starting al a random location in the solut...
In this article we consider Bayesian inference associated to deep neural networks (DNNs) and in part...
Bayesian techniques have been developed over many years in a range of different fields, but have onl...
Bayesian statistics is a powerful framework for modeling the world and reasoning over uncertainty. I...
Contains fulltext : 72783.pdf (publisher's version ) (Open Access)This thesis desc...
RÉSUMÉ: Les réseaux de neurones profonds sont capables de résoudre de nombreux problèmes d'apprentis...
In this work, I will focus on ways in which we can build machine learning models that appropriately ...
© 7th International Conference on Learning Representations, ICLR 2019. All Rights Reserved. Bayesian...
The solution to many science and engineering problems includes identifying the minimum or maximum of...
The Bayesian framework for machine learning allows for the incorporation of prior knowledge in a coh...
This paper introduces a new neural network based prior for real valued functions on $\mathbb R^d$ wh...
AbstractWe describe two specific examples of neural-Bayesian approaches for complex modeling tasks: ...
The last decade witnessed a growing interest in Bayesian learning. Yet, the technicality of the topi...
Summary The application of the Bayesian learning paradigm to neural networks results in a flexi-ble ...
We give a short review on Bayesian techniques for neural networks and demonstrate the advantages of ...
Conventional training methods for neural networks involve starting al a random location in the solut...
In this article we consider Bayesian inference associated to deep neural networks (DNNs) and in part...
Bayesian techniques have been developed over many years in a range of different fields, but have onl...
Bayesian statistics is a powerful framework for modeling the world and reasoning over uncertainty. I...
Contains fulltext : 72783.pdf (publisher's version ) (Open Access)This thesis desc...
RÉSUMÉ: Les réseaux de neurones profonds sont capables de résoudre de nombreux problèmes d'apprentis...
In this work, I will focus on ways in which we can build machine learning models that appropriately ...
© 7th International Conference on Learning Representations, ICLR 2019. All Rights Reserved. Bayesian...
The solution to many science and engineering problems includes identifying the minimum or maximum of...
The Bayesian framework for machine learning allows for the incorporation of prior knowledge in a coh...
This paper introduces a new neural network based prior for real valued functions on $\mathbb R^d$ wh...