Shortcuts
Bitte warten Sie, bis die Seite geladen ist.
SISSA Library . Default .
PageMenu- Hauptmenü-
Page content

Katalogdatenanzeige

Compositional Data Analysis: CoDaWork, L’Escala, Spain, June 2015

Compositional Data Analysis: CoDaWork, L’Escala, Spain, June 2015
Kataloginformation
Feldname Details
Dewey Class 519.5
Titel Compositional Data Analysis ([EBook]) : CoDaWork, L’Escala, Spain, June 2015 / / edited by Josep Antoni Martín-Fernández, Santiago Thió-Henestrosa.
Added Personal Name Martín-Fernández, Josep Antoni editor.
Thió-Henestrosa, Santiago editor.
Other name(s) SpringerLink (Online service)
Veröffentl Cham : : Springer International Publishing : : Imprint: Springer, , 2016.
Physical Details X, 209 p. 71 illus., 58 illus. in color. : online resource.
Reihe Springer Proceedings in Mathematics & Statistics 2194-1009 ; ; 187
ISBN 9783319448114
Summary Note The authoritative contributions gathered in this volume reflect the state of the art in compositional data analysis (CoDa). The respective chapters cover all aspects of CoDa, ranging from mathematical theory, statistical methods and techniques to its broad range of applications in geochemistry, the life sciences and other disciplines. The selected and peer-reviewed papers were originally presented at the 6th International Workshop on Compositional Data Analysis, CoDaWork 2015, held in L’Escala (Girona), Spain. Compositional data is defined as vectors of positive components and constant sum, and, more generally, all those vectors representing parts of a whole which only carry relative information. Examples of compositional data can be found in many different fields such as geology, chemistry, economics, medicine, ecology and sociology. As most of the classical statistical techniques are incoherent on compositions, in the 1980s John Aitchison proposed the log-ratio approach to CoDa. This became the foundation of modern CoDa, which is now based on a specific geometric structure for the simplex, an appropriate representation of the sample space of compositional data. The International Workshops on Compositional Data Analysis offer a vital discussion forum for researchers and practitioners concerned with the statistical treatment and modelling of compositional data or other constrained data sets and the interpretation of models and their applications. The goal of the workshops is to summarize and share recent developments, and to identify important lines of future research.:
Contents note Compositional Analysis of Species Composition - Pawlowsky-Glahn, Monreal-Pawlowsky, Egozcue -- Optimising Archaeologic Ceramics h-XRF Analyses - Bergman, Lindahl -- Relationship Between Popularity of Key Words on the Google Browser and the Evolution of Worldwide Financial Indexes - Ortells, Egozcue, Ortego, Garola -- Advances in Integrating Isotopic Data with Compositional Data Analysis: Applications for Deep Formation Brine Chemistry - Blondes, Engle, Geboy -- Space-time Compositional fields: An Introduction to Simplicial Partial Differential Operators - Jarauta-Bragulat, Egozcue -- A Compositional Approach to Allele Sharing Analysis - Galvan, Graffelman -- An Application of the Isometric Log-ratio Transformation in Relatedness Research -- Graffelman, Galvan -- Diagnostic Tools and Model Selection in Scaled-Dirichlet Regression - Monti, Mateu-Figueras, Pawlowsky-Glahn, Egozcue -- Toward the Concept of Background/Baseline Compositions: A Practicable Path? - Buccianti, Nisi, Raco -- Multi Element Geochemical Modelling for Mine Planning: Case Studies from Epithermal Gold Deposits – Caciagli, Warman -- Recognizing and Validating Structural Processes in Geochemical Data - Grunsky, Kjarsgaard.
System details note Online access to this digital book is restricted to subscription institutions through IP address (only for SISSA internal users)
Internet Site http://dx.doi.org/10.1007/978-3-319-44811-4
LINKS ZU 'VERWANDTEN WERKEN
  • Schlagwörter: .
  • Geochemistry .
  • Statistical Theory and Methods .
  • Statistics .
  • Statistics for Engineering, Physics, Computer Science, Chemistry and Earth Sciences .
  • Statistics for Life Sciences, Medicine, Health Sciences .

  • Authors:
    Corporate Authors:
    Series:
    Classification:
    Kataloginformation37366 Datensatzanfang . Kataloginformation37366 Seitenanfang .
    Schnellsuche