Advantages and Pitfalls of Pattern Recognition (Enhanced Edition) Advantages and Pitfalls of Pattern Recognition (Enhanced Edition)

Advantages and Pitfalls of Pattern Recognition (Enhanced Edition‪)‬

Selected Cases in Geophysics

Horst Langer et autres
    • 174,99 $
    • 174,99 $

Description de l’éditeur

Advantages and Pitfalls of Pattern Recognition presents various methods of pattern recognition and classification, useful to geophysicists, geochemists, geologists, geographers, data analysts, and educators and students of geosciences. Scientific and technological progress has dramatically improved the knowledge of our planet with huge amounts of digital data available in various fields of Earth Sciences, such as geology, geophysics, and geography. This has led to a new perspective of data analysis, requiring specific techniques that take several features into consideration rather than single parameters. Pattern recognition techniques offer a suitable key for processing and extracting useful information from the data of multivariate analysis. This book explores both supervised and unsupervised pattern recognition techniques, while providing insight into their application. Offers real-world examples of techniques for pattern recognition and handling multivariate data Includes examples, applications, and diagrams to enhance understanding Provides an introduction and access to relevant software packages

GENRE
Science et nature
SORTIE
2019
23 novembre
LANGUE
EN
Anglais
LONGUEUR
350
Pages
ÉDITEUR
Elsevier Science
VENDEUR
Elsevier Ltd.
TAILLE
108,4
 Mo

Plus de livres de ce type

Intelligent Methods with Applications in Volcanology and Seismology Intelligent Methods with Applications in Volcanology and Seismology
2023
Data Analysis Data Analysis
2013
Cooperation in Classification and Data Analysis Cooperation in Classification and Data Analysis
2009
Application of Soft Computing and Intelligent Methods in Geophysics Application of Soft Computing and Intelligent Methods in Geophysics
2018
COMPSTAT 2006 - Proceedings in Computational Statistics COMPSTAT 2006 - Proceedings in Computational Statistics
2007
Research in Data Science Research in Data Science
2019