Probabilistic Conditional Independence Structures Probabilistic Conditional Independence Structures
Information Science and Statistics

Probabilistic Conditional Independence Structures

    • ‏119٫99 US$
    • ‏119٫99 US$

وصف الناشر

Conditional independence is a topic that lies between statistics and artificial intelligence. Probabilistic Conditional Independence Structures provides the mathematical description of probabilistic conditional independence structures; the author uses non-graphical methods of their description, and takes an algebraic approach.


The monograph presents the methods of structural imsets and supermodular functions, and deals with independence implication and equivalence of structural imsets. Motivation, mathematical foundations and areas of application are included, and a rough overview of graphical methods is also given. In particular, the author has been careful to use suitable terminology, and presents the work so that it will be understood by both statisticians, and by researchers in artificial intelligence. The necessary elementary mathematical notions are recalled in an appendix.


Probabilistic Conditional Independence Structures will be a valuable new addition to the literature, and will interest applied mathematicians, statisticians, informaticians, computer scientists and probabilists with an interest in artificial intelligence. The book may also interest pure mathematicians as open problems are included.


Milan Studený is a senior research worker at the Academy of Sciences of the Czech Republic.

النوع
كمبيوتر وإنترنت
تاريخ النشر
٢٠٠٦
٢٢ يونيو
اللغة
EN
الإنجليزية
عدد الصفحات
٢٩٩
الناشر
Springer London
البائع
Springer Nature B.V.
الحجم
٧٫٩
‫م.ب.‬
Algorithmic Learning Theory Algorithmic Learning Theory
٢٠٠٧
Algorithmic Learning Theory Algorithmic Learning Theory
٢٠٠٨
Finite Model Theory and Its Applications Finite Model Theory and Its Applications
٢٠٠٧
Computer Science - Theory and Applications Computer Science - Theory and Applications
٢٠٠٨
Mathematical Foundations of Computer Science 2011 Mathematical Foundations of Computer Science 2011
٢٠١١
Computation and Logic in the Real World Computation and Logic in the Real World
٢٠٠٧
Bayesian Networks and Decision Graphs Bayesian Networks and Decision Graphs
٢٠٠٩
Novelty, Information and Surprise Novelty, Information and Surprise
٢٠٢٣
Information and Complexity in Statistical Modeling Information and Complexity in Statistical Modeling
٢٠٠٧
Bayesian Networks and Influence Diagrams: A Guide to Construction and Analysis Bayesian Networks and Influence Diagrams: A Guide to Construction and Analysis
٢٠١٢
Support Vector Machines Support Vector Machines
٢٠٠٨
Statistical and Inductive Inference by Minimum Message Length Statistical and Inductive Inference by Minimum Message Length
٢٠٠٥