We show that many machine-learning algorithms are specific instances of a single algorithm called the Bayesian learning rule. The rule, derived from Bayesian principles, yields a wide-range of algorithms from fields such as optimization, deep learning, and graphical models. This includes classical algorithms such as ridge regression, Newton's method, and Kalman filter, as well as modern deep-learning algorithms such as stochastic-gradient descent, RMSprop, and Dropout. The key idea in deriving such algorithms is to approximate the posterior using candidate distributions estimated by using natural gradients. Different candidate distributions result in different algorithms and further approximations to natural gradients give rise to variants ...
Bayesian optimization has recently emerged in the machine learning community as a very effective aut...
Generalised Bayesian learning algorithms are increasingly popular in machine learning, due to their ...
Bayesian analysts use a formal model, Bayes’ theorem to learn from their data in contrast to non-Bay...
Bayesian machine learning has gained tremendous attention in the machine learning community over the...
The last decade witnessed a growing interest in Bayesian learning. Yet, the technicality of the topi...
Bayesian machine learning is a subfield of machine learning that incorporates Bayesian principles an...
This tutorial text gives a unifying perspective on machine learning by covering both probabilistic a...
This is the second episode of the Bayesian saga started with the tutorial on the Bayesian probabilit...
This paper argues that Bayesian probability theory is a general method for machine learning. From tw...
The use of machine learning algorithms frequently involves careful tuning of learning parameters and...
Anyone working in machine learning requires a particular balance between multiple disciplines. A sol...
The use of machine learning algorithms frequently involves careful tuning of learning parameters and...
International audienceThis chapter surveys recent lines of work that use Bayesian techniques for rei...
Deep neural networks have recently become astonishingly successful at many machine learning problems...
Deep learning is a form of machine learning for nonlinear high dimensional pattern matching and pred...
Bayesian optimization has recently emerged in the machine learning community as a very effective aut...
Generalised Bayesian learning algorithms are increasingly popular in machine learning, due to their ...
Bayesian analysts use a formal model, Bayes’ theorem to learn from their data in contrast to non-Bay...
Bayesian machine learning has gained tremendous attention in the machine learning community over the...
The last decade witnessed a growing interest in Bayesian learning. Yet, the technicality of the topi...
Bayesian machine learning is a subfield of machine learning that incorporates Bayesian principles an...
This tutorial text gives a unifying perspective on machine learning by covering both probabilistic a...
This is the second episode of the Bayesian saga started with the tutorial on the Bayesian probabilit...
This paper argues that Bayesian probability theory is a general method for machine learning. From tw...
The use of machine learning algorithms frequently involves careful tuning of learning parameters and...
Anyone working in machine learning requires a particular balance between multiple disciplines. A sol...
The use of machine learning algorithms frequently involves careful tuning of learning parameters and...
International audienceThis chapter surveys recent lines of work that use Bayesian techniques for rei...
Deep neural networks have recently become astonishingly successful at many machine learning problems...
Deep learning is a form of machine learning for nonlinear high dimensional pattern matching and pred...
Bayesian optimization has recently emerged in the machine learning community as a very effective aut...
Generalised Bayesian learning algorithms are increasingly popular in machine learning, due to their ...
Bayesian analysts use a formal model, Bayes’ theorem to learn from their data in contrast to non-Bay...