𝔖 Scriptorium
✦   LIBER   ✦

πŸ“

Hybrid Random Fields: A Scalable Approach to Structure and Parameter Learning in Probabilistic Graphical Models

✍ Scribed by Antonino Freno, Edmondo Trentin (auth.)


Publisher
Springer Berlin Heidelberg
Year
2011
Tongue
English
Leaves
226
Series
Intelligent Systems Reference Library 15
Edition
1st Edition.
Category
Library

⬇  Acquire This Volume

No coin nor oath required. For personal study only.

✦ Synopsis


This book presents an exciting new synthesis of directed and undirected, discrete and continuous graphical models. Combining elements of Bayesian networks and Markov random fields, the newly introduced hybrid random fields are an interesting approach to get the best of both these worlds, with an added promise of modularity and scalability. The authors have written an enjoyable book---rigorous in the treatment of the mathematical background, but also enlivened by interesting and original historical and philosophical perspectives.
-- Manfred Jaeger, Aalborg Universitet

The book not only marks an effective direction of investigation with significant experimental advances, but it is also---and perhaps primarily---a guide for the reader through an original trip in the space of probabilistic modeling. While digesting the book, one is enriched with a very open view of the field, with full of stimulating connections. [...] Everyone specifically interested in Bayesian networks and Markov random fields should not miss it.
-- Marco Gori, UniversitοΏ½ degli Studi di Siena


Graphical models are sometimes regarded---incorrectly---as an impractical approach to machine learning, assuming that they only work well for low-dimensional applications and discrete-valued domains. While guiding the reader through the major achievements of this research area in a technically detailed yet accessible way, the book is concerned with the presentation and thorough (mathematical and experimental) investigation of a novel paradigm for probabilistic graphical modeling, the hybrid random field. This model subsumes and extends both Bayesian networks and Markov random fields. Moreover, it comes with well-defined learning algorithms, both for discrete and continuous-valued domains, which fit the needs of real-world applications involving large-scale, high-dimensional data.

✦ Table of Contents



Content:
Front Matter....Pages -
Introduction....Pages 1-14
Bayesian Networks....Pages 15-41
Markov Random Fields....Pages 43-68
Introducing Hybrid Random Fields: Discrete-Valued Variables....Pages 69-86
Extending Hybrid Random Fields: Continuous-Valued Variables....Pages 87-119
Applications....Pages 121-150
Probabilistic Graphical Models: Cognitive Science or Cognitive Technology?....Pages 151-162
Conclusions....Pages 163-167
Back Matter....Pages -


πŸ“œ SIMILAR VOLUMES


Learning Probabilistic Graphical Models
✍ David Bellot πŸ“‚ Library πŸ“… 2016 πŸ› Packt Publishing 🌐 English

<h4>Key Features</h4><ul><li>Predict and use a probabilistic graphical models (PGM) as an expert system</li><li>Comprehend how your computer can learn Bayesian modeling to solve real-world problems</li><li>Know how to prepare data and feed the models by using the appropriate algorithms from the appr

Probabilistic Reasoning in Multiagent Sy
✍ Yang Xiang πŸ“‚ Library πŸ“… 2002 πŸ› Cambridge University Press 🌐 English

Probalistic reasoning with graphical models, also known as Bayesian networks or belief networks, has become an active field of research and practice in artifical intelligence, operations research and statistics in the last two decades. The success of this technique in modeling intelligent decision s

Learning Probabilistic Graphical Models
✍ David Bellot πŸ“‚ Library πŸ“… 2016 πŸ› Packt Publishing 🌐 English

Probabilistic graphical models (PGM, also known as graphical models) are a marriage between probability theory and graph theory. Generally, PGMs use a graph-based representation. Two branches of graphical representations of distributions are commonly used, namely Bayesian networks and Markov network