Jeżeli nie znalazłeś poszukiwanej książki, skontaktuj się z nami wypełniając formularz kontaktowy.

Ta strona używa plików cookies, by ułatwić korzystanie z serwisu. Mogą Państwo określić warunki przechowywania lub dostępu do plików cookies w swojej przeglądarce zgodnie z polityką prywatności.

Wydawcy

Literatura do programów

Informacje szczegółowe o książce

Computational Learning and Probabilistic Reasoning - ISBN 9780471962793

Computational Learning and Probabilistic Reasoning

ISBN 9780471962793

Autor: A. Gammerman

Wydawca: Wiley

Dostępność: 3-6 tygodni

Cena: 1 418,55 zł

Przed złożeniem zamówienia prosimy o kontakt mailowy celem potwierdzenia ceny.


ISBN13:      

9780471962793

ISBN10:      

0471962791

Autor:      

A. Gammerman

Oprawa:      

Hardback

Rok Wydania:      

1996-05-28

Ilość stron:      

338

Wymiary:      

248x184

Tematy:      

PB

Providing a unified coverage of the latest research and applications methods and techniques, this book is devoted to two interrelated techniques for solving some important problems in machine intelligence and pattern recognition, namely probabilistic reasoning and computational learning. The contributions in this volume describe and explore the current developments in computer science and theoretical statistics which provide computational probabilistic models for manipulating knowledge found in industrial and business data. These methods are very efficient for handling complex problems in medicine, commerce and finance. Part I covers Generalisation Principles and Learning and describes several new inductive principles and techniques used in computational learning. Part II describes Causation and Model Selection including the graphical probabilistic models that exploit the independence relationships presented in the graphs, and applications of Bayesian networks to multivariate statistical analysis. Part III includes case studies and descriptions of Bayesian Belief Networks and Hybrid Systems. Finally, Part IV on Decision–Making, Optimization and Classification describes some related theoretical work in the field of probabilistic reasoning. Statisticians, IT strategy planners, professionals and researchers with interests in learning, intelligent databases and pattern recognition and data processing for expert systems will find this book to be an invaluable resource. Real–life problems are used to demonstrate the practical and effective implementation of the relevant algorithms and techniques.

Spis treści:
Partial table of contents:
GENERALISATION PRINCIPLES AND LEARNING.
Structure of Statistical Learning Theory (V. Vapnik).
MML Inference of Predictive Trees, Graphs and Nets (C. Wallace).
Probabilistic Association and Denotation in Machine Learning of Natural Language (P. Suppes & L. Liang).
CAUSATION AND MODEL SELE CTION.
Causation, Action, and Counterfactuals (J. Pearl).
Efficient Estimation and Model Selection in Large Graphical Models (D. Wedelin).
BAYESIAN BELIEF NETWORKS AND HYBRID SYSTEMS.
Bayesian Belief Networks and Patient Treatment (L. Meshalkin & E. Tsybulkin).
DECISION–MAKING, OPTIMIZATION AND CLASSIFICATION.
Axioms for Dynamic Programming (P. Shenoy).
Extreme Values of Functionals Characterizing Stability of Statistical Decisions (A. Nagaev).
Index.

Okładka tylna:
Providing a unified coverage of the latest research and applications methods and techniques, this book is devoted to two interrelated techniques for solving some important problems in machine intelligence and pattern recognition, namely probabilistic reasoning and computational learning. The contributions in this volume describe and explore the current developments in computer science and theoretical statistics which provide computational probabilistic models for manipulating knowledge found in industrial and business data. These methods are very efficient for handling complex problems in medicine, commerce and finance. Part I covers Generalisation Principles and Learning and describes several new inductive principles and techniques used in computational learning. Part II describes Causation and Model Selection including the graphical probabilistic models that exploit the independence relationships presented in the graphs, and applications of Bayesian networks to multivariate statistical analysis. Part III includes case studies and descriptions of Bayesian Belief Networks and Hybrid Systems. Finally, Part IV on Decision–Making, Optimization and Classification describes some related theoretical work in the field of probabilistic reasoning. Statisticians, IT strategy planners, professionals and researchers with interests in learning, intelligent databases and pattern recognition and data processing for expert systems will find this book to be a n invaluable resource. Real–life problems are used to demonstrate the practical and effective implementation of the relevant algorithms and techniques.

Koszyk

Książek w koszyku: 0 szt.

Wartość zakupów: 0,00 zł

ebooks
covid

Kontakt

Gambit
Centrum Oprogramowania
i Szkoleń Sp. z o.o.

Al. Pokoju 29b/22-24

31-564 Kraków


Siedziba Księgarni

ul. Kordylewskiego 1

31-542 Kraków

+48 12 410 5991

+48 12 410 5987

+48 12 410 5989

Zobacz na mapie google

Wyślij e-mail

Subskrypcje

Administratorem danych osobowych jest firma Gambit COiS Sp. z o.o. Na podany adres będzie wysyłany wyłącznie biuletyn informacyjny.

Autoryzacja płatności

PayU

Informacje na temat autoryzacji płatności poprzez PayU.

PayU banki

© Copyright 2012: GAMBIT COiS Sp. z o.o. Wszelkie prawa zastrzeżone.

Projekt i wykonanie: Alchemia Studio Reklamy