Bayesian Networks and Influence Diagrams: A Guide to Construction and Analysis Bayesian Networks and Influence Diagrams: A Guide to Construction and Analysis
Information Science and Statistics

Bayesian Networks and Influence Diagrams: A Guide to Construction and Analysis

    • 64,99 €
    • 64,99 €

Description de l’éditeur

Probabilistic networks, also known as Bayesian networks and influence diagrams, have become one of the most promising technologies in the area of applied artificial intelligence, offering intuitive, efficient, and reliable methods for diagnosis, prediction, decision making, classification, troubleshooting, and data mining under uncertainty.

Bayesian Networks and Influence Diagrams: A Guide to Construction and Analysis provides a comprehensive guide for practitioners who wish to understand, construct, and analyze intelligent systems for decision support based on probabilistic networks. Intended primarily for practitioners, this book does not require sophisticated mathematical skills or deep understanding of the underlying theory and methods nor does it discuss alternative technologies for reasoning under uncertainty. The theory and methods presented are illustrated through more than 140 examples, and exercises are included for the reader to check his/her level of understanding.

The techniques and methods presented for knowledge elicitation, model construction and verification, modeling techniques and tricks, learning models from data, and analyses of models have all been developed and refined on the basis of numerous courses that the authors have held for practitioners worldwide.

Uffe B. Kjærulff holds a PhD on probabilistic networks and is an Associate Professor of Computer Science at Aalborg University. Anders L. Madsen holds a PhD on probabilistic networks and is the CEO of HUGIN Expert A/S.

GENRE
Informatique et Internet
SORTIE
2007
20 décembre
LANGUE
EN
Anglais
LONGUEUR
336
Pages
ÉDITIONS
Springer New York
DÉTAILS DU FOURNISSEUR
Springer Science & Business Media LLC
TAILLE
5,2
Mo
Foundations of Computational Intelligence Volume 5 Foundations of Computational Intelligence Volume 5
2008
Probabilistic Graphical Models Probabilistic Graphical Models
2009
Graphical Belief Modeling Graphical Belief Modeling
2022
Risk Assessment and Decision Analysis with Bayesian Networks Risk Assessment and Decision Analysis with Bayesian Networks
2018
Cause Effect Pairs in Machine Learning Cause Effect Pairs in Machine Learning
2019
Causal Inference in Statistics Causal Inference in Statistics
2016
Novelty, Information and Surprise Novelty, Information and Surprise
2023
Information and Complexity in Statistical Modeling Information and Complexity in Statistical Modeling
2007
Bayesian Networks and Influence Diagrams: A Guide to Construction and Analysis Bayesian Networks and Influence Diagrams: A Guide to Construction and Analysis
2012
Probabilistic Conditional Independence Structures Probabilistic Conditional Independence Structures
2006
Support Vector Machines Support Vector Machines
2008
Statistical and Inductive Inference by Minimum Message Length Statistical and Inductive Inference by Minimum Message Length
2005