Description
Variational Bayesian learning is one of the most popular methods in machine learning. Designed for researchers and graduate students in machine learning, this book summarizes recent developments in the non-asymptotic and asymptotic theory of variational Bayesian learning and suggests how this theory can be applied in practice. The authors begin by developing a basic framework with a focus on conjugacy, which enables the reader to derive tractable algorithms. Next, it summarizes non-asymptotic theory, which, although limited in application to bilinear models, precisely describes the behavior of the variational Bayesian solution and reveals its sparsity inducing mechanism. Finally, the text summarizes asymptotic theory, which reveals phase transition phenomena depending on the prior setting, thus providing suggestions on how to set hyperparameters for particular purposes. Detailed derivations allow readers to follow along without prior knowledge of the mathematical techniques specific to Bayesian learning.
Author: Shinichi Nakajima, Kazuho Watanabe, Masashi Sugiyama
Publisher: Cambridge University Press
Published: 07/11/2019
Pages: 558
Binding Type: Hardcover
Weight: 2.00lbs
Size: 8.40h x 7.40w x 1.30d
ISBN13: 9781107076150
ISBN10: 1107076153
BISAC Categories:
- Computers | Artificial Intelligence | Computer Vision & Pattern Recognit
- Mathematics | Probability & Statistics | General
Author: Shinichi Nakajima, Kazuho Watanabe, Masashi Sugiyama
Publisher: Cambridge University Press
Published: 07/11/2019
Pages: 558
Binding Type: Hardcover
Weight: 2.00lbs
Size: 8.40h x 7.40w x 1.30d
ISBN13: 9781107076150
ISBN10: 1107076153
BISAC Categories:
- Computers | Artificial Intelligence | Computer Vision & Pattern Recognit
- Mathematics | Probability & Statistics | General