Possibility Theory for the Design of Information Fusion Systems Possibility Theory for the Design of Information Fusion Systems
Information Fusion and Data Science

Possibility Theory for the Design of Information Fusion Systems

    • USD 149.99
    • USD 149.99

Descripción editorial

This practical guidebook describes the basic concepts, the mathematical developments, and the engineering methodologies for exploiting possibility theory for the computer-based design of an information fusion system where the goal is decision support for industries in smart ICT (information and communications technologies).  This exploitation of possibility theory improves upon probability theory, complements Dempster-Shafer theory, and fills an important gap in this era of Big Data and Internet of Things.
The book discusses fundamental possibilistic concepts: distribution, necessity measure, possibility measure, joint distribution, conditioning, distances, similarity measures, possibilistic decisions, fuzzy sets, fuzzy measures and integrals, and finally, the interrelated theories of uncertainty..uncertainty. These topics form an essential tour of the mathematical tools needed for the latter chapters of the book. These chapters present applications related to  decision-making and pattern recognition schemes, and finally, a concluding chapter on the use of possibility theory in the overall challenging design of an information fusion system. This book will appeal to researchers and professionals in the field of information fusion and analytics, information and knowledge processing, smart ICT, and decision support systems.

GÉNERO
Ciencia y naturaleza
PUBLICADO
2019
26 de diciembre
IDIOMA
EN
Inglés
EXTENSIÓN
298
Páginas
EDITORIAL
Springer International Publishing
VENDEDOR
Springer Nature B.V.
TAMAÑO
28.9
MB
Relational Calculus for Actionable Knowledge Relational Calculus for Actionable Knowledge
2022
Predictive Maintenance in Smart Factories Predictive Maintenance in Smart Factories
2021
Feature Learning and Understanding Feature Learning and Understanding
2020
Data Analytics for Drilling Engineering Data Analytics for Drilling Engineering
2019
Mobile Data Mining and Applications Mobile Data Mining and Applications
2019
Information Quality in Information Fusion and Decision Making Information Quality in Information Fusion and Decision Making
2019