Join our mailing list
Get exclusive deals and learn about new products!
Reliable shipping
Flexible returns
In recent years considerable progress has been made in the area of probabilistic graphical models, in particular Bayesian networks and influence diagrams. Probabilistic graphical models have become mainstream in the area of uncertainty in artificial intelligence;
contributions to the area are coming from computer science, mathematics, statistics and engineering.
This carefully edited book brings together in one volume some of the most important topics of current research in probabilistic graphical modelling, learning from data and probabilistic inference. This includes topics such as the characterisation of conditional
independence, the sensitivity of the underlying probability distribution of a Bayesian network to variation in its parameters, the learning of graphical models with latent variables and extensions to the influence diagram formalism. In addition, attention is given to important application fields of probabilistic graphical models, such as the control of vehicles, bioinformatics and medicine.
Published by: Springer
Publication Date: 2007-02-05
Format: Hardcover
ISBN-13: 9783540689942
DOI: 10.1007/978-3-540-68996-6
Dimensions: 235cm x155cm
Pages: 386