Title
Cover
 
Machine learning for spatial environmental data
Theory, applications and software
Author(s): Mikhail Kanevski, Alexei Pozdnoukhov, Vadim Timonin
Scope(s): Environmental Sciences  
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Informations
ISBN: 978-2-940222-24-7
2009, 368 pages, 16x24 cm, 317 figures, Hardcover Includes the CD-ROM of the software, CRC Press ISBN 978-0-8493-8237-6
 
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82.50 euros

Subject
The book presents the state of the art in machine learning algorithms (artificial neural networks of different architectures, support vector machines, etc.) as applied to the classification and mapping of spatially distributed environmental data. Basic geostatistical algorithms are presented as well. New trends in machine learning and their application to spatial data are given, and real case studies based on environmental and pollution data are carried out. The book provides a CD-ROM with the Machine Learning Office software, including sample sets of data, that will allow both students and researchers to put the concepts rapidly to practice.
Public
Students and PhD students of geographical, geological and environmental departments, geophysicists, environmentalists (soil sciences, geography, mining), regulatory agencies, statisticians.
Content
Learning From Geospatial Data: Problems and Important Concepts of Machine Learning – Machine Learning Algorithms for Geospatial Data – Contents of the Book. Software Description – Short Review of the Literature - Exploratory Spatial Data Analysis: Presentation of Data and Case Studies: Exploratory Spatial Data Analysis – Data Pre-Processing – Spatial Correlations: Variography – Presentation of Data – k-Nearest Neighbours Algorithm: a Benchmark Model for Regression and Classification - Geostatistics: Spatial Predictions – Geostatistical Conditional Simulations – Spatial Classification – Software - Machine Learning Algorithms: Artificial Neural Networks: Introduction – Radial Basis Function Neural Networks – General Regression Neural Networks – Probabilistic Neural Networks – Self-Organising Maps – Gaussian Mixture Models And Mixture Density Network • Support Vector Machines And Kernel Methods: Introduction to Statistical Learning Theory – Support Vector Classification – Spatial Data Classification with SVM – Support Vector Regression – Spatial Data Mapping with SVR – Advanced Topics in Kernel Methods.
Same scope
Cover
This book describes the fundamental methodological aspects of the analysis and modelling of spacially distributed data, and the applications with the specific userfriendly software Geostat Office.
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Cover
Environment Geomechanics is a relatively new discipline at the interface between built and natural environment. Il es devoted to the understanding of the mechanical behavior of geomaterials under various environmental conditions. The new theories and models developed in this context will find applications in a large field of engineering.
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